bangumi-frames — Bilibili Anime Frame & Character Organizer
Overview
Give a Bilibili video (a bangumi ep link, a UP-upload BV link/id, or a local video file); it downloads → extracts scene-change keyframes → splits scenery vs character frames → organizes the character crops. One pass, two modes:
- no
--ref(cluster mode) — group every character crop by CCIP identity into
characters/char_NN/.
- with
--ref DIR(one-vs-rest mode) — given ONE character's reference folder,
pull every crop in the video that matches it into matched/, filenames prefixed with distance (closest first) so a tight threshold yields a pure set.
Models are anime-specific (deepghs anime person detection + CCIP character-identity embeddings) — they do not work on live-action footage.
When to use / when NOT to use
- Use when the user wants to collect/extract/organize anime frames or screenshots
from a Bilibili video — by character, by scenery, or to pull out one specific person.
- Don't use for live-action video (needs an insightface-class face stack instead),
or for generic video editing/trimming/transcoding.
Bundled resources
| Resource | Read it when |
|---|---|
references/pipeline.md | Tuning a stage — download (--height/--prefer), extract (--scene/--interval/--dedup/--skip), --clean (OCR+LaMa subtitle/watermark removal), classify (--conf/--min-area); feature caching; the CPU/CoreML rule; --redo |
references/modes.md | Choosing/tuning the two modes — mode 1 cluster (--eps/--min-samples) vs mode 2 one-vs-rest (--ref-eps, the distance-band histogram, the compressed-embedding threshold lore); full output layout |
scripts/bangumi_frames.py | The entry point (all stages + both modes) |
scripts/remove_overlay.py | Standalone subtitle/watermark removal on a frame dir or single image |
Prerequisites
ffmpegon PATH;yt-dlpon PATH for downloads (a local-file input skips download).- Python 3.9+,
pip install dghs-imgutils(first run pulls ~300 MB of models from
HuggingFace, then cached locally).
- A Bilibili cookie (Netscape
cookies.txt). Resolution order:
--cookies > $BILIBILI_COOKIES > ~/bb_up/bb_cookies/www.bilibili.com_cookies.txt. 1080p+ / premium episodes need a cookie with membership; a preview-only download means the cookie lacks access to that episode. Local-file input needs no cookie.
- Run the CCIP step on CPU — do not set
ONNX_MODE=CoreML(CCIP crashes; the script
pops it before clustering/matching). Person detection is fine on CoreML.
- (Only for
--clean)pip install rapidocr-onnxruntime simple-lama-inpainting. - (Only for
--engine pyscenedetect)pip install scenedetect.
Usage
SKILL=skills/bangumi-frames/scripts/bangumi_frames.py
# Mode 1 — cluster everyone into char_NN groups
python3 $SKILL https://www.bilibili.com/video/BV15qVm68E2h --out ~/frames
python3 $SKILL ep1231575 --out ~/frames # ep / BV id also accepted
python3 $SKILL ~/local.mp4 --out ~/frames # local file, skips download
# Mode 2 — pull out ONE character (ref folder = ~200 crops of that character)
python3 $SKILL BV15qVm68E2h --ref ~/refs/紫灵 --ref-eps 0.04 --out ~/frames
# Optional: strip burned-in subtitles + watermark before analysis
python3 $SKILL ep1231575 --clean --out ~/frames
Stages are idempotent (a stage is skipped when its output already exists; clustering / matching always re-runs since the CCIP features are cached). For every flag, the per-stage trade-offs, and the threshold lore, read the two reference files above.
Agent-native output: stdout is a single JSON envelope ({"ok", "data", "next", "meta"} on success, {"ok": false, "error"} on failure — JSON when piped, a human summary on a TTY; force with --format), stderr carries human progress logs, and exit codes are stable (0 ok · 1 runtime · 2 auth · 3 validation). Use --dry-run to preview the plan without downloading, --schema to print the output contract. Details in references/pipeline.md.
Output
<out>/<id>/ # id = BV id / ep id / local filename
├── frames/ frames.json # keyframes + timestamps
├── scenery/ # frames with no detected character
├── crops/ features.npy # character crops + cached CCIP features
├── detect.json # frame -> person boxes / crops
├── characters/ # MODE 1: char_NN_crop/ + char_NN_full/ (paired), _unsorted/, _montage.png
├── matched/ # MODE 2: 0.012_<crop>.jpg (distance-prefixed) + index.json
├── matched_montage.png # MODE 2 sample montage
└── index.json # MODE 1: char group -> {crop, frame, time}
After a run, look at characters/_montage.png (mode 1) or matched_montage.png (mode 2) first to judge quality, then read index.json. See references/modes.md for what to adjust when grouping/matching is off.
Limits
- Anime / 2.5D-render art only; live-action needs a different (face-recognition) stack.
- CCIP may split one character's different forms (outfit / transform) into separate groups
— usually fine for "group by visual appearance"; for mode 2, put each form in the ref.
- 1080p+ on Bilibili needs a membership cookie; download is for personal offline analysis
only and uploads nothing.





