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  • YOLO - You Only Look Once Algorithm
  • Specifying the bounding box

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  1. Computer Vision ↓↑

Bounding Box Prediction

PreviousObject DetectionNextEvaluating Object Localization

Last updated 4 years ago

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YOLO - You Only Look Once Algorithm

Very fast algorithm. Often used for real-time object detection.

Specifying the bounding box