Process videos by removing segments and concatenating remaining parts. Use when you need to remove detected pauses/openings from videos, create highlight reels, or batch process segment removals using ffmpeg filter_complex.
Installation
Details
Usage
After installing, this skill will be available to your AI coding assistant.
Verify installation:
npx agent-skills-cli listSkill Instructions
name: video-processor description: Process videos by removing segments and concatenating remaining parts. Use when you need to remove detected pauses/openings from videos, create highlight reels, or batch process segment removals using ffmpeg filter_complex.
Video Segment Processor
Processes videos by removing specified segments and concatenating the remaining parts. Handles multiple removal segments efficiently using ffmpeg's filter_complex.
Use Cases
- Removing detected pauses and openings from videos
- Creating highlight reels by keeping only specific segments
- Batch processing multiple segment removals
Usage
python3 /root/.claude/skills/video-processor/scripts/process_video.py \
--input /path/to/input.mp4 \
--output /path/to/output.mp4 \
--remove-segments /path/to/segments.json
Parameters
--input: Path to input video file--output: Path to output video file--remove-segments: JSON file containing segments to remove
Input Segment Format
{
"segments": [
{"start": 0, "end": 600, "duration": 600},
{"start": 610, "end": 613, "duration": 3}
]
}
Or multiple segment files:
python3 /root/.claude/skills/video-processor/scripts/process_video.py \
--input video.mp4 \
--output output.mp4 \
--remove-segments opening.json pauses.json
Output
Creates the processed video and a report JSON:
{
"original_duration": 3908.61,
"output_duration": 3078.61,
"removed_duration": 830.0,
"compression_percentage": 21.24,
"segments_removed": 91,
"segments_kept": 91
}
How It Works
- Load removal segments from JSON file(s)
- Calculate keep segments (inverse of removal segments)
- Build ffmpeg filter to trim and concatenate
- Process video using hardware-accelerated encoding
- Generate report with statistics
FFmpeg Filter Example
For 3 segments to keep:
[0:v]trim=start=600:end=610,setpts=PTS-STARTPTS[v0];
[0:a]atrim=start=600:end=610,asetpts=PTS-STARTPTS[a0];
[0:v]trim=start=613:end=1000,setpts=PTS-STARTPTS[v1];
[0:a]atrim=start=613:end=1000,asetpts=PTS-STARTPTS[a1];
[v0][v1]concat=n=2:v=1:a=0[outv];
[a0][a1]concat=n=2:v=0:a=1[outa]
Dependencies
- ffmpeg with libx264 and aac support
- Python 3.11+
Limitations
- Processing time: ~0.3× video duration (e.g., 20 min for 65 min video)
- Requires sufficient disk space (output ≈ 70-80% of input size)
- May have frame-accurate cuts (not sample-accurate)
Example
# Process video with opening and pause removal
python3 /root/.claude/skills/video-processor/scripts/process_video.py \
--input /root/lecture.mp4 \
--output /root/compressed.mp4 \
--remove-segments /root/opening.json /root/pauses.json
# Result: 65 min → 51 min (21.2% compression)
Performance Tips
- Use
-preset mediumfor balanced speed/quality - Use
-crf 23for good quality at reasonable size - Process on machines with 2+ CPU cores for faster encoding
Notes
- Preserves video quality using CRF encoding
- Maintains audio sync throughout
- Handles edge cases (segments at start/end of video)
- Generates detailed statistics for verification
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