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Real-Time Animated Characters Detection and Recognition with YOLOv5

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Examine the performance of the YOLOv5 algorithm in detecting and recognizing Tom, Jerry, and Spike.

Performances

Model Input Size Batch Size Dataset Size Val [email protected] Test [email protected]
Nano 640x640 16 25% 0.964 0.989
Nano 640x640 16 50% 0.969 0.953
Nano 640x640 16 75% 0.989 0.982
Nano 640x640 16 100% 0.989 0.977
Small 640x640 16 25% 0.989 0.921
Small 640x640 16 50% 0.983 0.935
Small 640x640 16 75% 0.977 0.98
Small 640x640 16 100% 0.98 0.985
Medium 640x640 16 25% 0.946 0.914
Medium 640x640 16 50% 0.984 0.982
Medium 640x640 16 75% 0.971 0.992
Medium 640x640 16 100% 0.983 0.986
  • Images: 1000
    • Has an object: 931
    • No object: 69
  • Object Instances:
    • Tom: 562
    • Spike: 538
    • Jerry: 490
  • Split Ratio:
    • Train: 70%
    • Validation: 21%
    • Test: 9%

Documentation

Hardwares

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Course

License

This project is licensed under the MIT License - see the LICENSE.md file for details

Acknowledgments

Special thank to