Add video duration_s to inventory and propagate to merged TSV
build_video_inventory.py now opens each mp4 with cv2 to record duration_s. Cached: a video already in the previous inventory keeps its computed duration, so re-runs only pay the cv2 cost for new recordings. export_video_db_index.py looks up the matched video's duration and writes it as training_video_duration_s / testing_video_duration_s alongside the existing path columns. Useful for spotting unusually short or long sessions and for sanity checks on the tracker output. Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
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2 changed files with 64 additions and 12 deletions
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@ -64,6 +64,51 @@ def scan_videos(videos_root: Path) -> pd.DataFrame:
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return pd.DataFrame(rows)
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def video_duration_s(mp4_path: str) -> float | None:
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"""Read video duration in seconds via cv2. Returns None on failure."""
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import cv2 # local import — heavy module, only needed when computing
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cap = cv2.VideoCapture(mp4_path)
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if not cap.isOpened():
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return None
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fps = cap.get(cv2.CAP_PROP_FPS)
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frames = cap.get(cv2.CAP_PROP_FRAME_COUNT)
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cap.release()
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if fps <= 0 or frames <= 0:
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return None
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return float(frames / fps)
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def add_durations(videos_df: pd.DataFrame, prev_inv_path: Path) -> pd.DataFrame:
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"""Annotate videos_df with a duration_s column.
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Reuses durations from the previous inventory CSV when present
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(keyed on mp4_path) — only newly-discovered videos pay the cv2 open cost.
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"""
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cache: dict[str, float] = {}
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if prev_inv_path.exists():
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prev = pd.read_csv(prev_inv_path)
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if "duration_s" in prev.columns:
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for _, r in prev.dropna(subset=["duration_s"]).iterrows():
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cache[r["mp4_path"]] = float(r["duration_s"])
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durations: list[float | None] = []
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todo_count = sum(1 for p in videos_df["mp4_path"] if p not in cache)
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if todo_count:
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print(f" computing duration for {todo_count} new video(s)…")
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try:
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from tqdm.auto import tqdm
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except ImportError:
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def tqdm(it, **_): return it
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for mp4_path in tqdm(videos_df["mp4_path"], desc="durations", unit="vid"):
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if mp4_path in cache:
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durations.append(cache[mp4_path])
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else:
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durations.append(video_duration_s(mp4_path))
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videos_df = videos_df.copy()
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videos_df["duration_s"] = durations
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return videos_df
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def already_tracked_set(tracked_dir: Path) -> set[tuple[str, str]]:
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"""Return the set of (date, time) sessions for which a tracking DB exists.
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@ -83,6 +128,8 @@ def main() -> None:
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videos_df = scan_videos(VIDEOS_ROOT)
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print(f" found {len(videos_df)} video sessions on disk")
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videos_df = add_durations(videos_df, INVENTORY_CSV)
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print(f"Loading metadata xlsx: {VIDEO_INFO_XLSX}")
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meta = pd.read_excel(VIDEO_INFO_XLSX)
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meta["session_date"] = meta["date"].dt.strftime("%Y-%m-%d")
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@ -57,6 +57,7 @@ def parse_xlsx_time(value: str) -> tuple[str, int] | None:
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def build_session_index(inventory: pd.DataFrame) -> dict[tuple[str, str], list[dict]]:
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"""Index inventory rows by (date, machine_name) → list of session dicts."""
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idx: dict[tuple[str, str], list[dict]] = {}
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has_duration = "duration_s" in inventory.columns
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for row in inventory.itertuples(index=False):
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h, m, _s = (int(p) for p in str(row.session_time).split("-"))
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key = (row.session_date, row.machine_name)
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@ -64,6 +65,7 @@ def build_session_index(inventory: pd.DataFrame) -> dict[tuple[str, str], list[d
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"mp4_path": row.mp4_path,
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"session_datetime": row.session_datetime,
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"minutes": h * 60 + m,
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"duration_s": float(row.duration_s) if has_duration and pd.notna(row.duration_s) else None,
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})
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return idx
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@ -83,7 +85,7 @@ def resolve_session(
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when: str,
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fallback_date: str | None,
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index: dict[tuple[str, str], list[dict]],
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) -> tuple[str, str]:
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) -> tuple[str, str, float | None]:
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"""Look up the video + db whose start time is closest to `when`.
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Match strategy:
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@ -95,16 +97,18 @@ def resolve_session(
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Among candidates, pick the video whose start minute is closest to the
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xlsx-claimed time, within ±_TIME_TOLERANCE_MIN.
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Returns (mp4_path, db_path, duration_s) — empty strings / None if no match.
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"""
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parsed = parse_xlsx_time(when)
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if parsed is None:
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return "", ""
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return "", "", None
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date, target_min = parsed
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candidates = index.get((date, machine_name), [])
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if not candidates and fallback_date:
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candidates = index.get((fallback_date, machine_name), [])
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if not candidates:
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return "", ""
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return "", "", None
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def _gap(target: int, c: dict) -> int:
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# Reason: xlsx times like '1230AM' are ambiguous (12 AM vs 12 PM).
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@ -114,9 +118,9 @@ def resolve_session(
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best = min(candidates, key=lambda c: _gap(target_min, c))
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if _gap(target_min, best) > _TIME_TOLERANCE_MIN:
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return "", ""
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return "", "", None
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db = db_path_for_video(best["mp4_path"])
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return best["mp4_path"], (str(db) if db else "")
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return best["mp4_path"], (str(db) if db else ""), best.get("duration_s")
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# Variants of "naive" the xlsx has accumulated: 'naïve', 'niave', plus
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@ -151,19 +155,20 @@ def main() -> None:
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_normalize_metadata(df)
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date_iso = pd.to_datetime(df["date"]).dt.strftime("%Y-%m-%d")
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train_videos, train_dbs, test_videos, test_dbs = [], [], [], []
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train_videos, train_dbs, train_durs = [], [], []
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test_videos, test_dbs, test_durs = [], [], []
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for fallback, row in zip(date_iso, df.itertuples(index=False)):
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tv, td = resolve_session(row.machine_name, row.training_date_time, fallback, index)
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sv, sd = resolve_session(row.machine_name, row.testing_date_time, fallback, index)
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train_videos.append(tv)
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train_dbs.append(td)
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test_videos.append(sv)
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test_dbs.append(sd)
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tv, td, tdur = resolve_session(row.machine_name, row.training_date_time, fallback, index)
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sv, sd, sdur = resolve_session(row.machine_name, row.testing_date_time, fallback, index)
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train_videos.append(tv); train_dbs.append(td); train_durs.append(tdur)
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test_videos.append(sv); test_dbs.append(sd); test_durs.append(sdur)
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df["training_video_path"] = train_videos
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df["training_db_path"] = train_dbs
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df["training_video_duration_s"] = train_durs
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df["testing_video_path"] = test_videos
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df["testing_db_path"] = test_dbs
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df["testing_video_duration_s"] = test_durs
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# Reason: an analyst flag for excluding individual fly/session rows that
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# turn out to be too noisy or otherwise unusable. Default True; flip to
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