VidLLVIP / datamaker /01_time_align.py
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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
import subprocess
from pathlib import Path
from typing import Optional, Sequence
import cv2
import numpy as np
import pandas as pd
from tqdm import tqdm
# =========================
# Parameters
# =========================
DATAMAKER_DIR = Path(__file__).resolve().parent
PROJECT_ROOT = DATAMAKER_DIR.parent
RAW_IR_DIR = PROJECT_ROOT / "raw" / "videos" / "ir"
RAW_VI_DIR = PROJECT_ROOT / "raw" / "videos" / "vi"
OUTPUT_DIR = DATAMAKER_DIR / "01_align"
VIDEO_IDS = [f"{idx:02d}" for idx in range(1, 15)]
MAX_GAP_SECONDS = 0.08
SAVE_EXCEL = True
FOURCC = "mp4v"
OVERWRITE = True
# =========================
def get_frame_timestamps(video_path: Path) -> list[float]:
cmd = [
"ffprobe",
"-v",
"error",
"-select_streams",
"v:0",
"-show_entries",
"frame=pkt_pts_time,best_effort_timestamp_time",
"-of",
"csv=p=0",
str(video_path),
]
try:
result = subprocess.run(
cmd,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
text=True,
check=True,
)
except subprocess.CalledProcessError as exc:
raise RuntimeError(f"ffprobe failed for {video_path}: {exc.stderr}") from exc
timestamps: list[float] = []
for line in result.stdout.splitlines():
for value in line.split(","):
value = value.strip()
if not value or value == "N/A":
continue
try:
timestamps.append(float(value))
break
except ValueError:
continue
if not timestamps:
raise RuntimeError(f"No frame timestamps found in {video_path}")
return timestamps
def build_monotone_map(
base_ts: Sequence[float],
src_ts: Sequence[float],
max_gap: float,
) -> list[int]:
if not base_ts or not src_ts:
raise ValueError("Timestamp lists must not be empty.")
mapping: list[int] = []
src_idx = 0
for timestamp in base_ts:
while (
src_idx + 1 < len(src_ts)
and abs(src_ts[src_idx + 1] - timestamp) < abs(src_ts[src_idx] - timestamp)
):
src_idx += 1
mapping.append(src_idx if abs(src_ts[src_idx] - timestamp) <= max_gap else -1)
return mapping
def make_black_frame(cap: cv2.VideoCapture) -> np.ndarray:
height = int(cap.get(cv2.CAP_PROP_FRAME_HEIGHT))
width = int(cap.get(cv2.CAP_PROP_FRAME_WIDTH))
return np.zeros((height, width, 3), dtype=np.uint8)
def make_writers(
cap_base: cv2.VideoCapture,
cap_src: cv2.VideoCapture,
out_base: Path,
out_src: Path,
) -> tuple[cv2.VideoWriter, cv2.VideoWriter]:
fps = cap_base.get(cv2.CAP_PROP_FPS)
base_size = (
int(cap_base.get(cv2.CAP_PROP_FRAME_WIDTH)),
int(cap_base.get(cv2.CAP_PROP_FRAME_HEIGHT)),
)
src_size = (
int(cap_src.get(cv2.CAP_PROP_FRAME_WIDTH)),
int(cap_src.get(cv2.CAP_PROP_FRAME_HEIGHT)),
)
fourcc = cv2.VideoWriter_fourcc(*FOURCC)
out_base.parent.mkdir(parents=True, exist_ok=True)
out_src.parent.mkdir(parents=True, exist_ok=True)
writer_base = cv2.VideoWriter(str(out_base), fourcc, fps, base_size)
writer_src = cv2.VideoWriter(str(out_src), fourcc, fps, src_size)
if not writer_base.isOpened() or not writer_src.isOpened():
raise IOError(f"Failed to open output writers: {out_base}, {out_src}")
return writer_base, writer_src
def align_videos(
ir_path: Path,
vi_path: Path,
out_ir: Path,
out_vi: Path,
excel_path: Optional[Path],
) -> None:
if not ir_path.exists() or not vi_path.exists():
raise FileNotFoundError(f"Missing input pair: {ir_path}, {vi_path}")
if not OVERWRITE and (out_ir.exists() or out_vi.exists()):
raise FileExistsError(f"Output exists and OVERWRITE=False: {out_ir}, {out_vi}")
ir_ts = get_frame_timestamps(ir_path)
vi_ts = get_frame_timestamps(vi_path)
if len(ir_ts) <= len(vi_ts):
base_ts, src_ts = ir_ts, vi_ts
base_path, src_path = ir_path, vi_path
out_base, out_src = out_ir, out_vi
base_label, src_label = "IR", "VI"
else:
base_ts, src_ts = vi_ts, ir_ts
base_path, src_path = vi_path, ir_path
out_base, out_src = out_vi, out_ir
base_label, src_label = "VI", "IR"
src_indices = build_monotone_map(base_ts, src_ts, MAX_GAP_SECONDS)
cap_base = cv2.VideoCapture(str(base_path))
cap_src = cv2.VideoCapture(str(src_path))
if not cap_base.isOpened() or not cap_src.isOpened():
raise IOError(f"Failed to open videos: {base_path}, {src_path}")
writer_base, writer_src = make_writers(cap_base, cap_src, out_base, out_src)
ok_src, frame_src = cap_src.read()
src_idx_prev = 0 if ok_src else -1
black_src = make_black_frame(cap_src)
for base_idx in tqdm(
range(len(base_ts)),
desc=f"Align {ir_path.stem}",
unit="frame",
position=1,
leave=False,
):
ok_base, frame_base = cap_base.read()
if not ok_base:
break
mapped_idx = src_indices[base_idx]
if mapped_idx < 0:
frame_to_write = black_src
else:
while src_idx_prev < mapped_idx:
ok_src, frame_src = cap_src.read()
src_idx_prev += 1
frame_to_write = frame_src if ok_src and frame_src is not None else black_src
writer_base.write(frame_base)
writer_src.write(frame_to_write)
cap_base.release()
cap_src.release()
writer_base.release()
writer_src.release()
if SAVE_EXCEL and excel_path is not None:
excel_path.parent.mkdir(parents=True, exist_ok=True)
matched_src_ts = [src_ts[idx] if idx >= 0 else None for idx in src_indices]
diffs = [
base_time - src_time if src_time is not None else None
for base_time, src_time in zip(base_ts, matched_src_ts)
]
pd.DataFrame(
{
"Base_Idx": range(len(base_ts)),
f"{base_label}_ts(s)": base_ts,
f"{src_label}_nearest_ts(s)": matched_src_ts,
"DeltaT(s)": diffs,
}
).to_excel(excel_path, index=False)
def main() -> None:
with tqdm(
total=len(VIDEO_IDS),
desc="Total align",
unit="video",
position=0,
) as progress:
for video_id in VIDEO_IDS:
progress.set_postfix(video=video_id)
out_dir = OUTPUT_DIR / video_id
align_videos(
ir_path=RAW_IR_DIR / f"{video_id}.mp4",
vi_path=RAW_VI_DIR / f"{video_id}.mp4",
out_ir=out_dir / "ir.mp4",
out_vi=out_dir / "vi.mp4",
excel_path=out_dir / "timestamp.xlsx" if SAVE_EXCEL else None,
)
tqdm.write(f"Aligned {video_id} -> {out_dir}")
progress.update(1)
if __name__ == "__main__":
main()