added gap validation.

This commit is contained in:
Felix Delattre 2026-05-17 15:55:15 +02:00
parent 374be6865d
commit 740249115b
12 changed files with 997 additions and 116 deletions

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@ -52,10 +52,25 @@ By default, most stages in `run.py` are **commented out** (metrics-only). Uncomm
With prepared data and EFAST installed:
```bash
python -m gap_validation.run --site innsbruck --season 2024 --lat 47.116171 --lon 11.320308
# Phenology sidecars (TIMESAT 50 % amplitude)
python -m phenology_timesat --all
# Spatial NSE_S2 vs withheld S2 (unit test: Estonia peatland, 30 d, green-up)
python -m gap_validation.run --site pitsalu --season 2024 --lat 58.5633 --lon 24.3688 \
--strategy aggressive --sigma 20 --mode bti --transition green_up --gap-days 30
# All six sites, best BtI scenario per site
python -m gap_validation.batch_spatial
# Full-season NSE_PC on gap-degraded stack (slow)
python -m gap_validation.temporal_pc --site pitsalu --season 2024 --lat 58.5633 --lon 24.3688
python -m gap_validation.batch_temporal
# TIMESAT day-offsets on gap fusion vs PhenoCam (needs temporal tier)
python -m gap_validation.phenology_offsets
```
Writes `data/{site}/{season}/validation/gap_manifest.json`, `gap_validation_summary.json`, and masked fusion under `validation/fusion/`. See `python -m gap_validation.run --help`.
Writes `gap_manifest.json`, `gap_withheld_images.json`, `gap_validation_summary.json` (spatial), and optionally `gap_metrics.json` (temporal). Masked fusion under `validation/fusion/gap_{N}_{transition}/`. See `python -m gap_validation.run --help`.
## Data layout

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@ -0,0 +1,111 @@
"""Run spatial NSE_S2 gap validation for all thesis sites (best BtI scenario per site)."""
from __future__ import annotations
import argparse
import json
import re
from pathlib import Path
from gap_validation.calendar import DEFAULT_GAP_LENGTHS, TRANSITIONS
from gap_validation.run import run_validation
# Primary season per site (matches scripts/export_thesis_tables.py).
PRIMARY_SEASON = {
"forthgr": 2024,
"innsbruck": 2024,
"pitsalu": 2024,
"vindeln2": 2023,
"sunflowerjerez1": 2024,
"institutekarnobat": 2024,
}
def _site_positions(geojson: Path) -> dict[str, tuple[float, float]]:
data = json.loads(geojson.read_text(encoding="utf-8"))
out: dict[str, tuple[float, float]] = {}
for feat in data.get("features", []):
props = feat.get("properties") or {}
name = props.get("sitename")
coords = (feat.get("geometry") or {}).get("coordinates")
if not name or not coords or len(coords) < 2:
continue
lon, lat = float(coords[0]), float(coords[1])
out[str(name)] = (lat, lon)
return out
def _parse_scenario(key: str) -> tuple[str, int | None, str]:
"""``aggressive_sigma20`` → (strategy, sigma, bti)."""
mode = "itb" if key.endswith("_itb") else "bti"
base = key.replace("_itb", "")
m = re.match(r"^(aggressive|nonaggressive)_sigma(\d+)$", base)
if not m:
raise ValueError(f"Cannot parse scenario key: {key!r}")
strategy = m.group(1)
sigma = int(m.group(2))
return strategy, sigma if sigma == 30 else (None if sigma == 20 else sigma), mode
def _best_bti_from_metrics(metrics_path: Path) -> str | None:
if not metrics_path.is_file():
return None
temporal = json.loads(metrics_path.read_text(encoding="utf-8")).get("temporal") or {}
best_key, best_nse = None, None
for k, v in temporal.items():
if not k.endswith("_itb") and isinstance(v, dict):
n = v.get("nse_pc")
if isinstance(n, (int, float)) and (best_nse is None or n > best_nse):
best_nse = n
best_key = k
return best_key
def main() -> None:
ap = argparse.ArgumentParser(description="Batch spatial gap validation (six sites).")
ap.add_argument("--data-dir", type=Path, default=Path("data"))
ap.add_argument("--sites-geojson", type=Path, default=Path("data/sites.geojson"))
ap.add_argument("--skip-fusion", action="store_true")
ap.add_argument("--write-manifest-only", action="store_true")
ap.add_argument(
"--gap-days",
type=int,
action="append",
help="Filter gap lengths (default: all 15 and 30 in manifest).",
)
args = ap.parse_args()
positions = _site_positions(args.sites_geojson)
gap_filter = args.gap_days
for site, season in sorted(PRIMARY_SEASON.items()):
pos = positions.get(site)
if not pos:
print(f"[skip] No coordinates for {site}")
continue
metrics_path = args.data_dir / site / str(season) / "metrics.json"
scenario_key = _best_bti_from_metrics(metrics_path)
if not scenario_key:
print(f"[skip] {site} {season}: no metrics.json / BtI scenarios")
continue
strategy, sigma, mode = _parse_scenario(scenario_key)
sigma_kw = 30 if sigma == 30 else None
print(f"=== {site} {season} {scenario_key} ===")
out = run_validation(
site,
season,
pos,
strategy,
sigma_kw,
mode,
skip_manifest=False,
skip_fusion=args.skip_fusion,
write_manifest_only=args.write_manifest_only,
gap_days_filter=gap_filter,
transition_filter=None,
s2_calendar_strategy=strategy,
)
print(out)
if __name__ == "__main__":
main()

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@ -0,0 +1,56 @@
"""Run full-season gap-degraded NSE_PC for all thesis sites (best BtI scenario)."""
from __future__ import annotations
import argparse
from pathlib import Path
from gap_validation.batch_spatial import (
PRIMARY_SEASON,
_best_bti_from_metrics,
_parse_scenario,
_site_positions,
)
from gap_validation.temporal_pc import run_temporal_pc
def main() -> None:
ap = argparse.ArgumentParser(description="Batch temporal gap NSE_PC (six sites).")
ap.add_argument("--data-dir", type=Path, default=Path("data"))
ap.add_argument("--sites-geojson", type=Path, default=Path("data/sites.geojson"))
ap.add_argument("--skip-fusion", action="store_true")
ap.add_argument("--gap-days", type=int, action="append")
args = ap.parse_args()
positions = _site_positions(args.sites_geojson)
for site, season in sorted(PRIMARY_SEASON.items()):
pos = positions.get(site)
if not pos:
print(f"[skip] No coordinates for {site}")
continue
metrics_path = args.data_dir / site / str(season) / "metrics.json"
scenario_key = _best_bti_from_metrics(metrics_path)
if not scenario_key:
print(f"[skip] {site} {season}: no metrics.json")
continue
strategy, sigma, mode = _parse_scenario(scenario_key)
sigma_kw = 30 if sigma == 30 else None
print(f"=== {site} {season} temporal {scenario_key} ===")
out = run_temporal_pc(
site,
season,
pos,
strategy,
sigma_kw,
mode,
skip_manifest=False,
skip_fusion=args.skip_fusion,
gap_days_filter=args.gap_days,
transition_filter=None,
s2_calendar_strategy=strategy,
)
print(out)
if __name__ == "__main__":
main()

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@ -1,4 +1,4 @@
"""Gap windows and nearest S2 acquisition (manifest inputs)."""
"""Gap windows, phenological midpoints, manifest and withheld-image sidecar."""
from __future__ import annotations
@ -10,43 +10,58 @@ from pathlib import Path
from phenology_timesat import phenocam_phenology_path
REFL_DATE_RE = re.compile(r"S2A_MSIL2A_(\d{8})_REFL\.tif$")
DEFAULT_GAP_LENGTHS = (15, 30)
TRANSITIONS = ("green_up", "green_down")
def validation_dir(site_name: str, season: int) -> Path:
return Path(f"data/{site_name}/{season}/validation")
def phenology_midpoint(
site_name: str, season: int, phenology_path: Path | None = None
) -> date:
"""Pick fusion gap midpoint: green-up if in season, else green-down, else July 1."""
path = phenology_path or phenocam_phenology_path(site_name, season)
def _parse_iso_date(s, season: int) -> date | None:
if not s or not isinstance(s, str):
return None
try:
d = datetime.strptime(s[:10], "%Y-%m-%d").date()
except ValueError:
return None
y0, y1 = date(season, 1, 1), date(season, 12, 31)
fallback = date(season, 7, 1)
return d if y0 <= d <= y1 else None
def transition_midpoint(
site_name: str,
season: int,
transition: str,
phenology_path: Path | None = None,
) -> date | None:
"""TIMESAT 50 % amplitude date for ``green_up`` or ``green_down``; None if missing."""
if transition not in TRANSITIONS:
raise ValueError(f"transition must be one of {TRANSITIONS}, got {transition!r}")
path = phenology_path or phenocam_phenology_path(site_name, season)
if not path.is_file():
return fallback
return None
try:
rec = json.loads(path.read_text(encoding="utf-8"))
except (OSError, json.JSONDecodeError):
return fallback
up_s = rec.get("green_up_50pct_date")
dn_s = rec.get("green_down_50pct_date")
return None
key = (
"green_up_50pct_date"
if transition == "green_up"
else "green_down_50pct_date"
)
return _parse_iso_date(rec.get(key), season)
def _parse(s) -> date | None:
if not s or not isinstance(s, str):
return None
try:
d = datetime.strptime(s[:10], "%Y-%m-%d").date()
except ValueError:
return None
return d if y0 <= d <= y1 else None
up, dn = _parse(up_s), _parse(dn_s)
if up:
return up
if dn:
return dn
return fallback
def phenology_midpoint(
site_name: str, season: int, phenology_path: Path | None = None
) -> date:
"""Legacy: green-up if in season, else green-down, else July 1."""
for tr in ("green_up", "green_down"):
d = transition_midpoint(site_name, season, tr, phenology_path)
if d:
return d
return date(season, 7, 1)
def centered_window(mid: date, gap_days: int, season: int) -> tuple[date, date]:
@ -84,43 +99,77 @@ def nearest_s2_acquisition(
) -> tuple[date, str] | None:
if not pairs:
return None
best = min(pairs, key=lambda t: abs((t[0] - prediction).days))
return best
return min(pairs, key=lambda t: abs((t[0] - prediction).days))
def build_manifest_entries(
site_name: str,
season: int,
gap_lengths: tuple[int, ...] = (15, 30, 60, 90),
gap_lengths: tuple[int, ...] = DEFAULT_GAP_LENGTHS,
transitions: tuple[str, ...] = TRANSITIONS,
s2_calendar_strategy: str = "aggressive",
) -> list[dict]:
"""One entry per gap length: window, prediction=midpoint, withheld = nearest S2 to midpoint."""
mid = phenology_midpoint(site_name, season)
"""One entry per (transition, gap_days): phenology midpoint, window, withheld S2."""
prepared_s2 = Path(f"data/{site_name}/{season}/prepared_{s2_calendar_strategy}/s2")
pairs = list_s2_refl_dates(prepared_s2)
entries = []
for gap_days in gap_lengths:
w0, w1 = centered_window(mid, gap_days, season)
prediction = mid
ns = nearest_s2_acquisition(prediction, pairs)
if ns is None:
withheld_date = None
withheld_filename = None
else:
withheld_date, withheld_filename = ns[0].isoformat(), ns[1]
entries.append(
entries: list[dict] = []
for transition in transitions:
mid = transition_midpoint(site_name, season, transition)
if mid is None:
continue
for gap_days in gap_lengths:
w0, w1 = centered_window(mid, gap_days, season)
prediction = mid
ns = nearest_s2_acquisition(prediction, pairs)
if ns is None:
withheld_date = None
withheld_filename = None
else:
withheld_date, withheld_filename = ns[0].isoformat(), ns[1]
entries.append(
{
"transition": transition,
"gap_days": gap_days,
"midpoint_rule": f"{transition}_50pct_date",
"midpoint_date": mid.isoformat(),
"window_start": w0.isoformat(),
"window_end": w1.isoformat(),
"prediction_date": prediction.isoformat(),
"withheld_s2_date": withheld_date,
"withheld_s2_filename": withheld_filename,
}
)
return entries
def write_gap_withheld_images(
site_name: str,
season: int,
entries: list[dict],
) -> Path:
"""Reproducibility sidecar for withheld scenes and gap placement."""
path = validation_dir(site_name, season) / "gap_withheld_images.json"
records = []
for e in entries:
records.append(
{
"gap_days": gap_days,
"midpoint_rule": "green_up_50pct else green_down_50pct else July01",
"midpoint_date": mid.isoformat(),
"window_start": w0.isoformat(),
"window_end": w1.isoformat(),
"prediction_date": prediction.isoformat(),
"withheld_s2_date": withheld_date,
"withheld_s2_filename": withheld_filename,
"site_name": site_name,
"season": season,
"transition": e.get("transition"),
"gap_days": e.get("gap_days"),
"midpoint_date": e.get("midpoint_date"),
"window_start": e.get("window_start"),
"window_end": e.get("window_end"),
"withheld_s2_date": e.get("withheld_s2_date"),
"withheld_s2_filename": e.get("withheld_s2_filename"),
}
)
return entries
path.write_text(
json.dumps({"site_name": site_name, "season": season, "records": records}, indent=2)
+ "\n",
encoding="utf-8",
)
return path
def write_manifest(
@ -128,20 +177,29 @@ def write_manifest(
season: int,
site_position: tuple[float, float],
s2_calendar_strategy: str = "aggressive",
*,
gap_lengths: tuple[int, ...] = DEFAULT_GAP_LENGTHS,
transitions: tuple[str, ...] = TRANSITIONS,
) -> Path:
out_dir = validation_dir(site_name, season)
out_dir.mkdir(parents=True, exist_ok=True)
entries = build_manifest_entries(
site_name,
season,
gap_lengths=gap_lengths,
transitions=transitions,
s2_calendar_strategy=s2_calendar_strategy,
)
path = out_dir / "gap_manifest.json"
payload = {
"site_name": site_name,
"season": season,
"site_position_lat_lon": list(site_position),
"s2_calendar_strategy": s2_calendar_strategy,
"entries": build_manifest_entries(
site_name, season, s2_calendar_strategy=s2_calendar_strategy
),
"entries": entries,
}
path.write_text(json.dumps(payload, indent=2) + "\n", encoding="utf-8")
write_gap_withheld_images(site_name, season, entries)
return path

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@ -1,14 +1,20 @@
"""EFAST with symlinked S2 dir (withhold one acquisition); outputs under validation/."""
"""EFAST with symlinked S2 dir (gap window omitted); outputs under validation/."""
from __future__ import annotations
from datetime import datetime
from pathlib import Path
from tempfile import TemporaryDirectory
from fusion import run_efast, run_efast_itb
from preparation import _get_base_dir, _get_itb_base_dir
from gap_validation.s2_mask_dir import build_masked_s2_dir_bti, build_masked_s2_dir_itb
from gap_validation.s2_mask_dir import (
acquisition_yyyymmdd_in_window,
assert_no_leakage,
build_masked_s2_dir_bti,
build_masked_s2_dir_itb,
)
def prepared_s3_dir(season: int, site_name: str, strategy: str) -> Path:
@ -19,20 +25,35 @@ def validation_fusion_dir(
site_name: str,
season: int,
gap_days: int,
transition: str,
strategy: str,
sigma: int | None,
mode: str,
) -> Path:
"""``data/.../validation/fusion/gap_{n}/{strategy}_sigma{20|30}_{bti|itb}/``."""
"""``data/.../validation/fusion/gap_{n}_{transition}/{strategy}_sigma{20|30}_{bti|itb}/``."""
sig = 30 if sigma == 30 else 20
return (
Path(f"data/{site_name}/{season}/validation")
/ "fusion"
/ f"gap_{gap_days}"
/ f"gap_{gap_days}_{transition}"
/ f"{strategy}_sigma{sig}_{mode}"
)
def excluded_acquisition_days(
prepared_s2: Path,
window_start_iso: str,
window_end_iso: str,
withheld_yyyymmdd: str,
) -> set[str]:
"""Union of gap-window S2 days and the withheld validation acquisition."""
w0 = datetime.strptime(window_start_iso[:10], "%Y-%m-%d").date()
w1 = datetime.strptime(window_end_iso[:10], "%Y-%m-%d").date()
excluded = acquisition_yyyymmdd_in_window(prepared_s2, w0, w1)
excluded.add(withheld_yyyymmdd)
return excluded
def run_masked_fusion_one_date(
season: int,
site_position: tuple[float, float],
@ -41,19 +62,24 @@ def run_masked_fusion_one_date(
sigma: int | None,
mode: str,
prediction_date_iso: str,
window_start_iso: str,
window_end_iso: str,
withheld_yyyymmdd: str,
fusion_output_dir: Path,
) -> Path:
"""Build temp masked S2 dir, run EFAST for ``prediction_date_iso`` only; return output dir."""
"""Build temp masked S2 dir, run EFAST for ``prediction_date_iso`` only."""
fusion_output_dir.mkdir(parents=True, exist_ok=True)
date_range = f"{prediction_date_iso[:10]}/{prediction_date_iso[:10]}"
s3_dir = prepared_s3_dir(season, site_name, strategy)
with TemporaryDirectory(prefix="gapval_s2_") as tmp:
tmp_s2 = Path(tmp) / "s2"
if mode == "bti":
prep_s2 = _get_base_dir(season, site_name, strategy) / "s2"
build_masked_s2_dir_bti(prep_s2, withheld_yyyymmdd, tmp_s2)
excl = excluded_acquisition_days(
prep_s2, window_start_iso, window_end_iso, withheld_yyyymmdd
)
build_masked_s2_dir_bti(prep_s2, excl, tmp_s2)
assert_no_leakage(withheld_yyyymmdd, tmp_s2)
run_efast(
season,
site_position,
@ -62,13 +88,16 @@ def run_masked_fusion_one_date(
sigma=sigma,
date_range=date_range,
s2_output_dir=tmp_s2,
s3_output_dir=s3_dir,
s3_output_dir=prepared_s3_dir(season, site_name, strategy),
fusion_output_dir=fusion_output_dir,
)
elif mode == "itb":
prep_s2 = _get_itb_base_dir(season, site_name, strategy) / "s2"
s3_itb = _get_itb_base_dir(season, site_name, strategy) / "s3"
build_masked_s2_dir_itb(prep_s2, withheld_yyyymmdd, tmp_s2)
excl = excluded_acquisition_days(
prep_s2, window_start_iso, window_end_iso, withheld_yyyymmdd
)
build_masked_s2_dir_itb(prep_s2, excl, tmp_s2)
assert_no_leakage(withheld_yyyymmdd, tmp_s2)
run_efast_itb(
season,
site_position,
@ -77,7 +106,7 @@ def run_masked_fusion_one_date(
sigma=sigma,
date_range=date_range,
s2_output_dir=tmp_s2,
s3_output_dir=s3_itb,
s3_output_dir=_get_itb_base_dir(season, site_name, strategy) / "s3",
fusion_output_dir=fusion_output_dir,
)
else:
@ -86,6 +115,64 @@ def run_masked_fusion_one_date(
return fusion_output_dir
def run_masked_fusion_season(
season: int,
site_position: tuple[float, float],
site_name: str,
strategy: str,
sigma: int | None,
mode: str,
window_start_iso: str,
window_end_iso: str,
withheld_yyyymmdd: str,
fusion_output_dir: Path,
) -> Path:
"""Full-season EFAST on gap-degraded S2 stack (temporal NSE_PC tier)."""
fusion_output_dir.mkdir(parents=True, exist_ok=True)
date_range = f"{season}-01-01/{season}-12-31"
with TemporaryDirectory(prefix="gapval_s2_") as tmp:
tmp_s2 = Path(tmp) / "s2"
if mode == "bti":
prep_s2 = _get_base_dir(season, site_name, strategy) / "s2"
excl = excluded_acquisition_days(
prep_s2, window_start_iso, window_end_iso, withheld_yyyymmdd
)
build_masked_s2_dir_bti(prep_s2, excl, tmp_s2)
assert_no_leakage(withheld_yyyymmdd, tmp_s2)
run_efast(
season,
site_position,
site_name,
cleaning_strategy=strategy,
sigma=sigma,
date_range=date_range,
s2_output_dir=tmp_s2,
s3_output_dir=prepared_s3_dir(season, site_name, strategy),
fusion_output_dir=fusion_output_dir,
)
else:
prep_s2 = _get_itb_base_dir(season, site_name, strategy) / "s2"
excl = excluded_acquisition_days(
prep_s2, window_start_iso, window_end_iso, withheld_yyyymmdd
)
build_masked_s2_dir_itb(prep_s2, excl, tmp_s2)
assert_no_leakage(withheld_yyyymmdd, tmp_s2)
run_efast_itb(
season,
site_position,
site_name,
cleaning_strategy=strategy,
sigma=sigma,
date_range=date_range,
s2_output_dir=tmp_s2,
s3_output_dir=_get_itb_base_dir(season, site_name, strategy) / "s3",
fusion_output_dir=fusion_output_dir,
)
return fusion_output_dir
def production_fusion_path(
season: int,
site_name: str,

View file

@ -0,0 +1,146 @@
"""TIMESAT transition dates on gap-degraded fusion series vs PhenoCam reference."""
from __future__ import annotations
import argparse
import json
from datetime import datetime
from pathlib import Path
from phenology_timesat import (
build_yraw_three_years,
phenocam_phenology_path,
run_timesat_phenology_from_yraw,
)
from gap_validation.batch_spatial import (
PRIMARY_SEASON,
_best_bti_from_metrics,
_parse_scenario,
_site_positions,
)
from gap_validation.calendar import load_manifest, validation_dir
from gap_validation.temporal_pc import _fusion_gcc_timeseries
def _day_offset(iso_a: str | None, iso_b: str | None) -> int | None:
if not iso_a or not iso_b:
return None
try:
a = datetime.strptime(iso_a[:10], "%Y-%m-%d").date()
b = datetime.strptime(iso_b[:10], "%Y-%m-%d").date()
return abs((a - b).days)
except ValueError:
return None
def _timesat_transitions(by_date: dict[str, float], season: int) -> dict[str, str | None]:
y1, y2, y3 = season - 1, season, season + 1
yraw, _mode = build_yraw_three_years(by_date, y1, y2, y3)
out = run_timesat_phenology_from_yraw(yraw, (y1, y2, y3))
return {
"green_up": out.get("green_up_50pct_date"),
"green_down": out.get("green_down_50pct_date"),
}
def _temporal_fusion_dir(
site: str, season: int, gap_days: int, transition: str, scenario_key: str
) -> Path:
strategy, sigma, mode = _parse_scenario(scenario_key)
sig = 30 if sigma == 30 else 20
return (
validation_dir(site, season)
/ "temporal"
/ f"gap_{gap_days}_{transition}"
/ f"{strategy}_sigma{sig}_{mode}"
)
def compute_offsets_for_site(
site: str,
season: int,
site_position: tuple[float, float],
*,
gap_days_list: tuple[int, ...] = (15, 30),
) -> list[dict]:
base = Path(f"data/{site}/{season}")
metrics_path = base / "metrics.json"
scenario_key = _best_bti_from_metrics(metrics_path)
if not scenario_key:
return []
ref_path = phenocam_phenology_path(site, season)
reference = (
json.loads(ref_path.read_text(encoding="utf-8")) if ref_path.is_file() else {}
)
manifest = load_manifest(site, season)
rows: list[dict] = []
for entry in manifest["entries"]:
gd = entry.get("gap_days")
tr = entry.get("transition")
if gd not in gap_days_list or tr not in ("green_up", "green_down"):
continue
fusion_dir = _temporal_fusion_dir(site, season, gd, tr, scenario_key)
if not fusion_dir.is_dir():
continue
_, _, mode = _parse_scenario(scenario_key)
ts = _fusion_gcc_timeseries(fusion_dir, site_position, mode)
if len(ts) < 10:
continue
fused = _timesat_transitions(ts, season)
ref_key = (
"green_up_50pct_date"
if tr == "green_up"
else "green_down_50pct_date"
)
ref_date = reference.get(ref_key)
fused_date = fused.get("green_up" if tr == "green_up" else "green_down")
rows.append(
{
"site_name": site,
"season": season,
"transition": tr,
"gap_days": gd,
"scenario": scenario_key,
"reference_date": ref_date,
"fused_date": fused_date,
"abs_day_offset": _day_offset(fused_date, ref_date),
"window_start": entry.get("window_start"),
"window_end": entry.get("window_end"),
}
)
return rows
def write_phenology_offsets(
site: str,
season: int,
site_position: tuple[float, float],
*,
gap_days_list: tuple[int, ...] = (15, 30),
) -> Path:
rows = compute_offsets_for_site(
site, season, site_position, gap_days_list=gap_days_list
)
out = validation_dir(site, season) / "gap_phenology_offsets.json"
payload = {"site_name": site, "season": season, "records": rows}
out.write_text(json.dumps(payload, indent=2) + "\n", encoding="utf-8")
return out
def main() -> None:
ap = argparse.ArgumentParser(description="Gap fusion TIMESAT offsets vs PhenoCam.")
ap.add_argument("--data-dir", type=Path, default=Path("data"))
ap.add_argument("--sites-geojson", type=Path, default=Path("data/sites.geojson"))
args = ap.parse_args()
positions = _site_positions(args.sites_geojson)
for site, season in sorted(PRIMARY_SEASON.items()):
pos = positions.get(site)
if not pos:
continue
p = write_phenology_offsets(site, season, pos)
print(p)
if __name__ == "__main__":
main()

View file

@ -9,7 +9,13 @@ import sys
from datetime import datetime
from pathlib import Path
from gap_validation.calendar import load_manifest, validation_dir, write_manifest
from gap_validation.calendar import (
DEFAULT_GAP_LENGTHS,
TRANSITIONS,
load_manifest,
validation_dir,
write_manifest,
)
from gap_validation.fusion_masked import (
production_fusion_path,
run_masked_fusion_one_date,
@ -65,6 +71,19 @@ def _git_rev() -> str | None:
return None
def _filter_entries(
entries: list[dict],
gap_days_filter: list[int] | None,
transition_filter: list[str] | None,
) -> list[dict]:
out = entries
if gap_days_filter:
out = [e for e in out if e.get("gap_days") in gap_days_filter]
if transition_filter:
out = [e for e in out if e.get("transition") in transition_filter]
return out
def run_validation(
site_name: str,
season: int,
@ -77,7 +96,10 @@ def run_validation(
skip_fusion: bool,
write_manifest_only: bool,
gap_days_filter: list[int] | None,
transition_filter: list[str] | None,
s2_calendar_strategy: str,
manifest_gap_lengths: tuple[int, ...] = DEFAULT_GAP_LENGTHS,
manifest_transitions: tuple[str, ...] = TRANSITIONS,
) -> Path:
base = Path(f"data/{site_name}/{season}")
vdir = validation_dir(site_name, season)
@ -85,24 +107,31 @@ def run_validation(
if not skip_manifest:
write_manifest(
site_name, season, site_position, s2_calendar_strategy=s2_calendar_strategy
site_name,
season,
site_position,
s2_calendar_strategy=s2_calendar_strategy,
gap_lengths=manifest_gap_lengths,
transitions=manifest_transitions,
)
if write_manifest_only:
return vdir / "gap_manifest.json"
manifest = load_manifest(site_name, season)
entries = manifest["entries"]
if gap_days_filter:
entries = [e for e in entries if e.get("gap_days") in gap_days_filter]
entries = _filter_entries(manifest["entries"], gap_days_filter, transition_filter)
results: list[dict] = []
for entry in entries:
gap_days = entry["gap_days"]
transition = entry.get("transition", "green_up")
pred = entry["prediction_date"]
w0 = entry["window_start"]
w1 = entry["window_end"]
fn = entry.get("withheld_s2_filename")
if not fn:
results.append(
{
"transition": transition,
"gap_days": gap_days,
"error": "no_withheld_s2_filename",
"entry": entry,
@ -114,6 +143,7 @@ def run_validation(
if not wh_ymd:
results.append(
{
"transition": transition,
"gap_days": gap_days,
"error": "could_not_parse_withheld_yyyymmdd",
"withheld_s2_filename": fn,
@ -125,20 +155,33 @@ def run_validation(
)
fusion_out = validation_fusion_dir(
site_name, season, gap_days, strategy, sigma, mode
site_name, season, gap_days, transition, strategy, sigma, mode
)
if not skip_fusion:
run_masked_fusion_one_date(
season,
site_position,
site_name,
strategy,
sigma,
mode,
pred,
wh_ymd,
fusion_out,
)
try:
run_masked_fusion_one_date(
season,
site_position,
site_name,
strategy,
sigma,
mode,
pred,
w0,
w1,
wh_ymd,
fusion_out,
)
except RuntimeError as e:
results.append(
{
"transition": transition,
"gap_days": gap_days,
"error": str(e),
"entry": entry,
}
)
continue
fused_gap = _fused_file(fusion_out, mode, ymd)
prod = production_fusion_path(season, site_name, strategy, sigma, mode, ymd)
@ -146,6 +189,7 @@ def run_validation(
if wh_path is None or not fused_gap.is_file():
results.append(
{
"transition": transition,
"gap_days": gap_days,
"prediction_date": pred,
"withheld_s2_filename": fn,
@ -165,14 +209,17 @@ def run_validation(
fused_gap,
prod if prod.is_file() else None,
mode,
whittaker_context=(base, strategy, pred, withheld_iso),
whittaker_context=(base, strategy, pred, withheld_iso, w0, w1),
)
fusion_nse = (spatial.get("gap") or {}).get("nse_s2")
wh_nse = (spatial.get("whittaker") or {}).get("nse_s2")
results.append(
{
"transition": transition,
"gap_days": gap_days,
"prediction_date": pred,
"window_start": w0,
"window_end": w1,
"withheld_s2_filename": fn,
"scenario": {
"strategy": strategy,
@ -186,6 +233,7 @@ def run_validation(
},
"spatial": spatial,
"whittaker_crossover_row": {
"transition": transition,
"gap_days": gap_days,
"nse_s2_fusion": fusion_nse,
"nse_s2_whittaker": wh_nse,
@ -206,15 +254,15 @@ def run_validation(
"command_line": sys.argv,
"git_commit": _git_rev(),
"manifest": str(vdir / "gap_manifest.json"),
"gap_withheld_images": str(vdir / "gap_withheld_images.json"),
"results": results,
"whittaker_crossover": {
scenario: {
"metric": "nse_s2_spatial_vs_withheld_s2_gcc",
"whittaker_definition": (
"Whittaker λ=400 d² on cloud-screened S2 GCC from s2_preselection.json; "
"withheld acquisition removed from the fit; prediction is a spatially constant "
"field at the smoothed GCC(prediction_date), compared to withheld S2 GCC on the "
"same valid mask as fusion (aligned with baseline.s2_whittaker_lambda400 spirit)."
"all S2 dates in the gap window and the withheld acquisition removed; "
"prediction is a spatially constant field at smoothed GCC(prediction_date)."
),
"first_gap_days_fusion_nse_below_whittaker": first_gap_where_fusion_below_whittaker(
crossover_rows,
@ -250,6 +298,12 @@ def main() -> None:
metavar="N",
help="Restrict to gap length(s); repeatable (default: all manifest lengths).",
)
ap.add_argument(
"--transition",
choices=list(TRANSITIONS),
action="append",
help="Restrict to transition(s); repeatable (default: all in manifest).",
)
ap.add_argument("--skip-manifest", action="store_true")
ap.add_argument(
"--skip-fusion",
@ -259,7 +313,7 @@ def main() -> None:
ap.add_argument(
"--write-manifest-only",
action="store_true",
help="Write gap_manifest.json and exit (no EFAST).",
help="Write gap_manifest.json + gap_withheld_images.json and exit.",
)
ap.add_argument(
"--s2-calendar-strategy",
@ -270,6 +324,8 @@ def main() -> None:
args = ap.parse_args()
sigma_kw = 30 if args.sigma == 30 else None
site_position = (args.lat, args.lon)
gap_filter = args.gap_days if args.gap_days else None
trans_filter = args.transition if args.transition else None
out = run_validation(
args.site,
args.season,
@ -280,7 +336,8 @@ def main() -> None:
skip_manifest=args.skip_manifest,
skip_fusion=args.skip_fusion,
write_manifest_only=args.write_manifest_only,
gap_days_filter=args.gap_days,
gap_days_filter=gap_filter,
transition_filter=trans_filter,
s2_calendar_strategy=args.s2_calendar_strategy,
)
print(out)

View file

@ -1,8 +1,9 @@
"""Symlink prepared S2 into a temp dir, omitting one acquisition (REFL + DIST_CLOUD)."""
"""Symlink prepared S2 into a temp dir, omitting gap-window acquisitions (REFL/GCC + DIST)."""
from __future__ import annotations
import re
from datetime import date, datetime
from pathlib import Path
# Acquisition calendar day in prepared S2 names (BtI REFL/DIST; ItB GCC/DIST).
@ -14,10 +15,34 @@ def yyyymmdd_in_name(name: str) -> str | None:
return m.group(1) if m else None
def yyyymmdd_from_iso(iso_d: str) -> str:
return datetime.strptime(iso_d[:10], "%Y-%m-%d").strftime("%Y%m%d")
def acquisition_yyyymmdd_in_window(
prepared_s2: Path, window_start: date, window_end: date
) -> set[str]:
"""All S2 acquisition days (from REFL filenames) inside [window_start, window_end]."""
out: set[str] = set()
if not prepared_s2.is_dir():
return out
for p in prepared_s2.glob("*REFL.tif"):
m = re.search(r"S2A_MSIL2A_(\d{8})_REFL\.tif$", p.name)
if not m:
continue
d = datetime.strptime(m.group(1), "%Y%m%d").date()
if window_start <= d <= window_end:
out.add(m.group(1))
return out
def build_masked_s2_dir(
prepared_s2: Path, withheld_yyyymmdd: str, dest: Path, patterns: tuple[str, ...]
prepared_s2: Path,
excluded_yyyymmdd: set[str],
dest: Path,
patterns: tuple[str, ...],
) -> int:
"""Symlink all files matching ``patterns`` except the withheld acquisition day."""
"""Symlink all files matching ``patterns`` except excluded acquisition days."""
dest.mkdir(parents=True, exist_ok=True)
n = 0
for pattern in patterns:
@ -25,7 +50,7 @@ def build_masked_s2_dir(
if not src.is_file() and not src.is_symlink():
continue
y = yyyymmdd_in_name(src.name)
if y == withheld_yyyymmdd:
if y and y in excluded_yyyymmdd:
continue
link = dest / src.name
if link.exists() or link.is_symlink():
@ -35,17 +60,32 @@ def build_masked_s2_dir(
return n
def assert_no_leakage(withheld_yyyymmdd: str, masked_s2_dir: Path) -> None:
"""Fail if the withheld validation acquisition is present in the fusion input dir."""
for p in masked_s2_dir.iterdir():
y = yyyymmdd_in_name(p.name)
if y == withheld_yyyymmdd:
raise RuntimeError(
f"Data leakage: withheld acquisition {withheld_yyyymmdd} "
f"found in masked S2 dir {masked_s2_dir}"
)
def build_masked_s2_dir_bti(
prepared_s2: Path, withheld_yyyymmdd: str, dest: Path
prepared_s2: Path,
excluded_yyyymmdd: set[str],
dest: Path,
) -> int:
return build_masked_s2_dir(
prepared_s2, withheld_yyyymmdd, dest, ("*REFL.tif", "*DIST_CLOUD.tif")
prepared_s2, excluded_yyyymmdd, dest, ("*REFL.tif", "*DIST_CLOUD.tif")
)
def build_masked_s2_dir_itb(
prepared_s2: Path, withheld_yyyymmdd: str, dest: Path
prepared_s2: Path,
excluded_yyyymmdd: set[str],
dest: Path,
) -> int:
return build_masked_s2_dir(
prepared_s2, withheld_yyyymmdd, dest, ("*GCC.tif", "*DIST_CLOUD.tif")
prepared_s2, excluded_yyyymmdd, dest, ("*GCC.tif", "*DIST_CLOUD.tif")
)

View file

@ -148,7 +148,7 @@ def evaluate_gap_vs_withheld(
fused_nogap_path: Path | None,
mode: str,
*,
whittaker_context: tuple[Path, str, str, str] | None = None,
whittaker_context: tuple[Path, str, str, str, str, str] | None = None,
) -> dict:
"""Spatial metrics for gap and no-gap; deltas; optional Whittaker constant-field vs same mask.
@ -170,9 +170,14 @@ def evaluate_gap_vs_withheld(
if whittaker_context is not None:
from gap_validation.whittaker_compare import whittaker_gcc_on_gap_masked_series
base, strategy, prediction_iso, withheld_iso = whittaker_context
base, strategy, prediction_iso, withheld_iso, w0, w1 = whittaker_context
wgcc = whittaker_gcc_on_gap_masked_series(
base, strategy, prediction_iso, withheld_iso
base,
strategy,
prediction_iso,
withheld_iso,
window_start_iso=w0,
window_end_iso=w1,
)
if wgcc is not None:
out["whittaker"] = constant_field_scores(yt, float(wgcc), mask)

View file

@ -0,0 +1,288 @@
"""Full-season gap-degraded fusion → temporal NSE_PC vs PhenoCam (tier after spatial validation)."""
from __future__ import annotations
import argparse
import json
import re
from datetime import datetime
from pathlib import Path
from metrics_indices import _get_gcc_from_original
from metrics_stats import (
WHITTAKER_LAMBDA_DAYS_SQ,
_norm_date_key,
_s2_gcc_series_from_preselection,
_whittaker_smooth_dict,
calculate_temporal_metrics,
load_timeseries,
)
from gap_validation.calendar import TRANSITIONS, load_manifest, validation_dir, write_manifest
from gap_validation.fusion_masked import run_masked_fusion_season, validation_fusion_dir
from gap_validation.run import (
_filter_entries,
_scenario_key,
_withheld_iso,
_yyyymmdd_from_withheld_filename,
)
from gap_validation.whittaker_compare import first_gap_where_fusion_below_whittaker
def _fusion_gcc_timeseries(
fusion_dir: Path, site_position: tuple[float, float], mode: str
) -> dict[str, float]:
"""3×3 mean GCC at site from fused REFL/GCC rasters in ``fusion_dir``."""
pattern = "REFL_*.tif" if mode == "bti" else "GCC_*.tif"
out: dict[str, float] = {}
for p in sorted(fusion_dir.glob(pattern)):
m = re.search(r"_(\d{8})\.tif$", p.name)
if not m:
continue
d = datetime.strptime(m.group(1), "%Y%m%d").date().isoformat()
gcc = _get_gcc_from_original(p, site_position)
if gcc is not None:
out[d] = float(gcc)
return out
def whittaker_timeseries_gap_degraded(
base: Path,
strategy: str,
window_start_iso: str,
window_end_iso: str,
withheld_iso: str,
lam: float = WHITTAKER_LAMBDA_DAYS_SQ,
) -> dict[str, float]:
"""Daily Whittaker GCC on S2 preselection with gap window + withheld day removed."""
all_gcc, flags = _s2_gcc_series_from_preselection(base)
if not all_gcc:
return {}
idx = 0 if strategy == "aggressive" else 1
w0 = datetime.strptime(window_start_iso[:10], "%Y-%m-%d").date()
w1 = datetime.strptime(window_end_iso[:10], "%Y-%m-%d").date()
wh_k = _norm_date_key(withheld_iso)
def in_window(dk: str) -> bool:
try:
d = datetime.strptime(dk[:10], "%Y-%m-%d").date()
except ValueError:
return False
return w0 <= d <= w1
kept = sorted(
(d, g)
for d, g in all_gcc.items()
if d in flags
and not flags[d][idx]
and _norm_date_key(d) != wh_k
and not in_window(_norm_date_key(d) or "")
)
if len(kept) < 2:
return {}
obs_d, obs_v = zip(*kept)
return _whittaker_smooth_dict(obs_d, obs_v, lam)
def run_temporal_pc(
site_name: str,
season: int,
site_position: tuple[float, float],
strategy: str,
sigma: int | None,
mode: str,
*,
skip_manifest: bool,
skip_fusion: bool,
gap_days_filter: list[int] | None,
transition_filter: list[str] | None,
s2_calendar_strategy: str,
) -> Path:
"""Run full-season gap fusion + NSE_PC; write ``gap_metrics.json``."""
base = Path(f"data/{site_name}/{season}")
vdir = validation_dir(site_name, season)
vdir.mkdir(parents=True, exist_ok=True)
if not skip_manifest:
write_manifest(
site_name,
season,
site_position,
s2_calendar_strategy=s2_calendar_strategy,
)
manifest = load_manifest(site_name, season)
entries = _filter_entries(manifest["entries"], gap_days_filter, transition_filter)
phenocam_ts_path = base / "raw" / "phenocam" / "phenocam_gcc.json"
phenocam_ts = load_timeseries(phenocam_ts_path)
nogap_metrics_path = base / "metrics.json"
nogap_nse: dict[str, float | None] = {}
if nogap_metrics_path.is_file():
m = json.loads(nogap_metrics_path.read_text(encoding="utf-8"))
sk = _scenario_key(strategy, sigma, mode)
block = (m.get("temporal") or {}).get(sk) or {}
nogap_nse["nse_pc"] = block.get("nse_pc")
results: list[dict] = []
crossover_rows: list[dict] = []
for entry in entries:
transition = entry.get("transition", "green_up")
gap_days = entry["gap_days"]
pred = entry["prediction_date"]
w0, w1 = entry["window_start"], entry["window_end"]
fn = entry.get("withheld_s2_filename")
if not fn:
results.append(
{"transition": transition, "gap_days": gap_days, "error": "no_withheld_s2"}
)
continue
wh_ymd = _yyyymmdd_from_withheld_filename(fn)
if not wh_ymd:
results.append(
{
"transition": transition,
"gap_days": gap_days,
"error": "bad_withheld_filename",
}
)
continue
withheld_iso = _withheld_iso(entry) or f"{wh_ymd[:4]}-{wh_ymd[4:6]}-{wh_ymd[6:8]}"
temporal_dir = (
vdir / "temporal" / f"gap_{gap_days}_{transition}" / _scenario_key(strategy, sigma, mode)
)
if not skip_fusion:
try:
run_masked_fusion_season(
season,
site_position,
site_name,
strategy,
sigma,
mode,
w0,
w1,
wh_ymd,
temporal_dir,
)
except RuntimeError as e:
results.append(
{
"transition": transition,
"gap_days": gap_days,
"error": str(e),
}
)
continue
fusion_ts = _fusion_gcc_timeseries(temporal_dir, site_position, mode)
else:
fusion_ts = _fusion_gcc_timeseries(temporal_dir, site_position, mode)
fused_metrics = calculate_temporal_metrics(fusion_ts, phenocam_ts)
wh_ts = whittaker_timeseries_gap_degraded(
base, strategy, w0, w1, withheld_iso
)
wh_metrics = calculate_temporal_metrics(wh_ts, phenocam_ts)
row: dict = {
"transition": transition,
"gap_days": gap_days,
"prediction_date": pred,
"window_start": w0,
"window_end": w1,
"withheld_s2_filename": fn,
"temporal": {
"fused": fused_metrics,
"whittaker": wh_metrics,
},
"fusion_dir": str(temporal_dir),
}
if fused_metrics and nogap_nse.get("nse_pc") is not None:
g_rmse = fused_metrics.get("rmse")
ng_rmse = None
if nogap_metrics_path.is_file():
sk = _scenario_key(strategy, sigma, mode)
ng_rmse = (
(json.loads(nogap_metrics_path.read_text()).get("temporal") or {})
.get(sk, {})
.get("rmse")
)
n_g = fused_metrics.get("nse_pc")
n_ng = nogap_nse["nse_pc"]
if g_rmse is not None and ng_rmse is not None:
row["delta_rmse"] = float(g_rmse - ng_rmse)
if n_g is not None and n_ng is not None:
row["delta_nse"] = float(n_ng - n_g)
fn_pc = (fused_metrics or {}).get("nse_pc")
wh_pc = (wh_metrics or {}).get("nse_pc")
row["utility_crossover_row"] = {
"transition": transition,
"gap_days": gap_days,
"nse_pc_fusion": fn_pc,
"nse_pc_whittaker": wh_pc,
}
crossover_rows.append(row["utility_crossover_row"])
results.append(row)
scenario = _scenario_key(strategy, sigma, mode)
payload = {
"site_name": site_name,
"season": season,
"scenario": scenario,
"tier": "temporal_nse_pc",
"manifest": str(vdir / "gap_manifest.json"),
"results": results,
"utility_crossover": {
scenario: {
"metric": "nse_pc_vs_phenocam_gcc90",
"first_gap_days_fusion_below_whittaker": first_gap_where_fusion_below_whittaker(
crossover_rows,
fusion_key="nse_pc_fusion",
whittaker_key="nse_pc_whittaker",
),
"by_gap": crossover_rows,
}
},
}
out_path = vdir / "gap_metrics.json"
out_path.write_text(json.dumps(payload, indent=2) + "\n", encoding="utf-8")
return out_path
def main() -> None:
ap = argparse.ArgumentParser(description="Gap-degraded full-season NSE_PC tier.")
ap.add_argument("--site", required=True)
ap.add_argument("--season", type=int, required=True)
ap.add_argument("--lat", type=float, required=True)
ap.add_argument("--lon", type=float, required=True)
ap.add_argument("--strategy", default="aggressive")
ap.add_argument("--sigma", type=int, default=20, choices=[20, 30])
ap.add_argument("--mode", default="bti", choices=["bti", "itb"])
ap.add_argument("--gap-days", type=int, action="append")
ap.add_argument("--transition", choices=list(TRANSITIONS), action="append")
ap.add_argument("--skip-manifest", action="store_true")
ap.add_argument("--skip-fusion", action="store_true")
ap.add_argument("--s2-calendar-strategy", default="aggressive")
args = ap.parse_args()
sigma_kw = 30 if args.sigma == 30 else None
out = run_temporal_pc(
args.site,
args.season,
(args.lat, args.lon),
args.strategy,
sigma_kw,
args.mode,
skip_manifest=args.skip_manifest,
skip_fusion=args.skip_fusion,
gap_days_filter=args.gap_days,
transition_filter=args.transition,
s2_calendar_strategy=args.s2_calendar_strategy,
)
print(out)
if __name__ == "__main__":
main()

View file

@ -2,6 +2,7 @@
from __future__ import annotations
from datetime import date, datetime
from pathlib import Path
from metrics_stats import (
@ -12,32 +13,48 @@ from metrics_stats import (
)
def _date_in_window(dk: str, start: date, end: date) -> bool:
try:
d = datetime.strptime(dk[:10], "%Y-%m-%d").date()
except ValueError:
return False
return start <= d <= end
def whittaker_gcc_on_gap_masked_series(
base: Path,
strategy: str,
prediction_iso: str,
withheld_iso: str,
*,
window_start_iso: str | None = None,
window_end_iso: str | None = None,
lam: float = WHITTAKER_LAMBDA_DAYS_SQ,
) -> float | None:
"""Whittaker smooth on cloud-screened S2 GCC **excluding** the withheld acquisition day.
Comparator aligned with ``baseline.s2_whittaker_lambda400`` in ``metrics_stats`` (same λ,
same preselection GCC), but the withheld date is removed so the smoother does not see
the target acquisition. Value at ``prediction_iso`` (YYYY-MM-DD) is returned.
"""
"""Whittaker on cloud-screened S2 GCC excluding gap-window dates and withheld day."""
pred_k = _norm_date_key(prediction_iso)
wh_k = _norm_date_key(withheld_iso)
if not pred_k or not wh_k:
return None
w0 = w1 = None
if window_start_iso and window_end_iso:
w0 = datetime.strptime(window_start_iso[:10], "%Y-%m-%d").date()
w1 = datetime.strptime(window_end_iso[:10], "%Y-%m-%d").date()
all_gcc, flags = _s2_gcc_series_from_preselection(base)
if not all_gcc:
return None
idx = 0 if strategy == "aggressive" else 1
kept = sorted(
(d, g)
for d, g in all_gcc.items()
if d in flags and not flags[d][idx] and _norm_date_key(d) != wh_k
)
kept = []
for d, g in all_gcc.items():
if d not in flags or flags[d][idx]:
continue
dk = _norm_date_key(d)
if not dk or dk == wh_k:
continue
if w0 is not None and w1 is not None and _date_in_window(dk, w0, w1):
continue
kept.append((d, g))
kept.sort(key=lambda t: t[0])
if len(kept) < 2:
return None
obs_d, obs_v = zip(*kept)
@ -57,7 +74,7 @@ def first_gap_where_fusion_below_whittaker(
for r in rows
if r.get(fusion_key) is not None and r.get(whittaker_key) is not None
]
eligible.sort(key=lambda r: r["gap_days"])
eligible.sort(key=lambda r: (r.get("transition") or "", r["gap_days"]))
for r in eligible:
if r[fusion_key] < r[whittaker_key]:
return int(r["gap_days"])

View file

@ -104,10 +104,10 @@
if (!manifest?.entries?.length) return "";
let h = `<h2>Gap manifest</h2>`;
h += `<p class="section-note">From <code>data/${siteName}/${season}/validation/gap_manifest.json</code>. Midpoint rule: ${manifest.entries[0]?.midpoint_rule || "—"}.</p>`;
h += `<table><tr><th>Gap days</th><th>Prediction</th><th>Window</th><th>Withheld S2</th></tr>`;
h += `<table><tr><th>Transition</th><th>Gap days</th><th>Prediction</th><th>Window</th><th>Withheld S2</th></tr>`;
for (const e of manifest.entries) {
const w = `${e.window_start} → ${e.window_end}`;
h += `<tr><td>${e.gap_days}</td><td>${e.prediction_date}</td><td>${w}</td><td>${e.withheld_s2_filename || "—"}</td></tr>`;
h += `<tr><td>${e.transition || "—"}</td><td>${e.gap_days}</td><td>${e.prediction_date}</td><td>${w}</td><td>${e.withheld_s2_filename || "—"}</td></tr>`;
}
h += `</table>`;
return h;
@ -116,7 +116,7 @@
function resultsTable(results) {
if (!results?.length) return `<p class="empty">No result rows in summary.</p>`;
const head = `<tr>
<th>Gap</th><th>Prediction</th><th>Withheld REFL</th>
<th>Transition</th><th>Gap</th><th>Prediction</th><th>Withheld REFL</th>
<th class="num">RMSE<br><span style="font-weight:normal">gap</span></th>
<th class="num">NSE<sub>S2</sub><br><span style="font-weight:normal">gap</span></th>
<th class="num">RMSE<br><span style="font-weight:normal">no gap</span></th>
@ -130,7 +130,7 @@
for (const r of results) {
if (r.error) {
parts.push(
`<tr><td>${r.gap_days ?? "—"}</td><td colspan="10" class="err">${r.error}</td><td class="paths">${r.fused_gap_path || ""}</td></tr>`
`<tr><td>${r.transition ?? "—"}</td><td>${r.gap_days ?? "—"}</td><td colspan="9" class="err">${r.error}</td><td class="paths">${r.fused_gap_path || ""}</td></tr>`
);
continue;
}
@ -142,6 +142,7 @@
const p = r.paths || {};
const pathNote = [p.fused_gap, p.fused_no_gap, p.withheld_s2_refl].filter(Boolean).join("<br>");
parts.push(`<tr>
<td>${r.transition || "—"}</td>
<td>${r.gap_days}</td>
<td>${r.prediction_date || "—"}</td>
<td style="font-size:11px">${r.withheld_s2_filename || "—"}</td>