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2025-07-17 00:03:03 +01:00

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1. Algorithm Choice

  • Selected: YOLOv8n (lightweight version)
  • Why:
    • Fast detection (0.5s/image on CPU)
    • Works well with small datasets (40 images)
    • Accurate for motherboard components

2. Hardware Impact

  • Training:
    • GPU recommended (4x faster training)
    • CPU works but slower
  • Deployment:
    • CPU sufficient for basic use
    • GPU better for high volume

3. Video Handling

  • Approach: Process each frame individually
  • Changes Needed:
    • Add frame-by-frame processing
    • Include tracking to follow memory modules
    • Optimize for speed (lower resolution helps)

Key Facts:

  • Same model works for images/video
  • CPU processing is practical
  • No architecture changes needed between image/video modes.