AgentSkillsCN

video-frame-reader

一款从视频文件中提取关键帧并分析其内容的技能。 自动去除重复帧,并优化图像质量,以降低Token消耗。 适用场景: - 用户提供了视频文件(.mp4、.mov、.avi等) - 用户请求“观看这段视频”、“分析这段视频”、“这段视频里有什么” - 检查屏幕录制或录屏回放 - 需要从视频中提取关键帧时

SKILL.md
--- frontmatter
name: video-frame-reader
description: |
  A skill that extracts keyframes from video files and analyzes their content.
  Automatically removes duplicate frames and optimizes image quality to reduce token consumption.

  Use when:
  - User provides a video file (.mp4, .mov, .avi, etc.)
  - User requests "watch this video", "analyze this video", "what's in this video"
  - Checking screen recordings or screencasts
  - Keyframe extraction is needed from video

Video Frame Reader

Extract keyframes from video, present token cost, then analyze.

Requirements

  • ffmpeg (for frame extraction)
  • Python 3 + Pillow + numpy

Workflow

1. Capture User Intent

Clearly understand why the user wants the video analyzed:

  • Example: "The screen transition behavior looks wrong"
  • Example: "I want to check the response after button click"
  • Example: "Help me identify performance issues"

This intent becomes important context for the analysis.

2. Create venv (First Time Only)

bash
cd ~/.claude/skills/video-frame-reader/scripts
python3 -m venv venv
source venv/bin/activate
pip install Pillow numpy --quiet

3. Extract Keyframes

bash
source ~/.claude/skills/video-frame-reader/scripts/venv/bin/activate
python3 ~/.claude/skills/video-frame-reader/scripts/extract_keyframes.py "<video_path>"

Output example (JSON):

json
{
  "keyframe_count": 52,
  "image_size": "266x576",
  "total_tokens": 10400,
  "cost_usd_opus": 0.156,
  "cost_usd_sonnet": 0.031,
  "cost_usd_haiku": 0.0104,
  "files": ["/.../key_0001.jpg", ...]
}

4. Present Cost

After extraction, present the following to the user:

code
Keyframe extraction complete:
- Frames extracted: {keyframe_count}
- Image size: {image_size}
- Estimated tokens: {total_tokens}
- Cost estimate: Haiku ${cost_usd_haiku} / Sonnet ${cost_usd_sonnet} / Opus ${cost_usd_opus}

Proceed with frame analysis?

5. Invoke Subagent After Approval

After user approval, invoke subagent using Task tool:

code
Task(
  subagent_type="general-purpose",
  model="haiku",
  description="Frame analysis",
  prompt="""
[User Intent]
{Intent captured in Step 1}

[Frame Image Files]
{List of paths from files array}

Analyze the above frame images and identify issues/behaviors according to the user's intent.
"""
)

Benefits of this approach:

  • ✅ User intent is included in analysis context
  • ✅ Subagent can focus on intent-specific efficient analysis
  • ✅ Processed in independent context for better token efficiency

Options

OptionDefaultDescription
-t, --threshold0.85Similarity threshold (higher = more frames kept)
-q, --quality30JPEG quality (1-100)
-s, --scale0.3Resize scale
-o, --output<video_name>_keyframes/Output directory

Token Reduction Example

bash
# More aggressive reduction (lower threshold, quality, and size)
python3 extract_keyframes.py video.mp4 -t 0.75 -q 20 -s 0.2