Self-hosted Opus Clip alternative — reels.biba.live
Go to file
Sebastjan Artič 157e6b781e Fix 'Žena' word still cut: word-level start extension instead of segment-level
Previous fix used segment boundaries — required segments <3s for type 1
or <4s for type 2. But Žena was in a 4.3s segment ('saj še doma mi več
noč'jo verjet'. Žena me'), so the condition wasn't met and clip start
stayed at 77.7s, exactly at end of word 'Žena' (76.88-77.70s).

New approach: scan word-level timestamps directly:

1. If clip start falls MID-WORD → extend back to word start - 0.15s
2. If a word ends 0-0.5s BEFORE clip start AND next word is at clip start
   → that word is suspect (may be first word of chorus that Scribe put
   in previous segment), extend back to its start - 0.15s

Word-level timestamps are always available from Scribe (timestamps_granularity=word).
Falls back to segment-level for local Whisper without word timing.

This handles arbitrary segment lengths and is universal — works for any
language where the chorus starts on a word that the STT placed in the
previous segment.
2026-04-29 15:04:18 +00:00
app ACRCloud auto-recognition: never block uploads, fall back to fingerprinting 2026-04-29 14:24:53 +00:00
scripts Fix 'Žena' word still cut: word-level start extension instead of segment-level 2026-04-29 15:04:18 +00:00
templates Fix 'Žena' word still cut: word-level start extension instead of segment-level 2026-04-29 15:04:18 +00:00
.env.example Initial: reels clipper app 2026-04-28 15:28:22 +00:00
.gitignore Initial: reels clipper app 2026-04-28 15:28:22 +00:00
docker-compose.yml Initial: reels clipper app 2026-04-28 15:28:22 +00:00
Dockerfile Add Deno runtime for yt-dlp YouTube nsig challenge solving 2026-04-28 16:05:09 +00:00
README.md Initial: reels clipper app 2026-04-28 15:28:22 +00:00
requirements.txt ACRCloud auto-recognition: never block uploads, fall back to fingerprinting 2026-04-29 14:24:53 +00:00

Reels Clipper · biba.live

Self-hosted Opus Clip alternativa za FOLX TV / PTC. Pretvori 16:9 video v 9:16 reels/shorts/tiktok format z auto face tracking, podnapisi (sl/de/en) in avto-detekcijo refrena v glasbenih pesmih.

Features

  • 📤 Drag & drop upload (do 2 GB)
  • 📺 YouTube URL paste (yt-dlp)
  • 🎯 Smart reframe: track (face follow), center, blur (za glasbo)
  • 🎵 Auto-chorus detection (Whisper + energy hibrid)
  • 📝 Burned-in podnapisi (faster-whisper, multi-jezik)
  • 🎨 3 stili podnapisov: reels, yellow (MrBeast), minimal
  • 🔐 HTTP Basic Auth
  • 📊 Real-time progress (Server-Sent Events)
  • 📦 Docker / Coolify ready

Quick start (lokalno)

docker compose up --build
# odpri http://localhost:8000

Default login: sebastjan / nastavi AUTH_PASS v .env.

Coolify deploy

  1. V Coolify ustvari nov projekt → Docker Compose iz tega repoja
  2. Domena: reels.biba.live
  3. Env vars:
    AUTH_USER=sebastjan
    AUTH_PASS=<močno geslo>
    MAX_UPLOAD_MB=2000
    
  4. Volume reels_data se ustvari avtomatsko
  5. Deploy → Coolify postavi Traefik reverse proxy + SSL via Let's Encrypt

Pipeline

Upload / YouTube
       ↓
[ yt_download.py ]    ← samo če YouTube
       ↓
[ find_chorus.py ]    ← samo če auto_chorus=true (Whisper + RMS analiza)
       ↓
[ reframe.py ]        ← 16:9 → 9:16 (track / center / blur)
       ↓
[ subtitle.py ]       ← Whisper transkripcija + burn-in
       ↓
   reel.mp4

API

  • POST /api/upload — multipart file upload, vrne job_id
  • POST /api/youtube — JSON {url, mode, lang, ...}
  • POST /api/process — start processing za uploaded job
  • GET /api/jobs — list vseh
  • GET /api/jobs/{id} — status
  • GET /api/stream/{id} — SSE stream progress
  • GET /api/download/{id} — final reel
  • DELETE /api/jobs/{id} — pobriši

Dependencies

  • FFmpeg (system)
  • faster-whisper (transkripcija)
  • OpenCV (face detection)
  • yt-dlp (YouTube)
  • FastAPI + uvicorn (server)