Tracking Pipeline helps you to solve the tracking problem more easily

Overview

Tracking_Pipeline

  • Tracking_Pipeline helps you to solve the tracking problem more easily

  • I integrate detection algorithms like: Yolov5, Yolov4, YoloX, NanoDet

  • And tracking algorithms like : Sort, Deepsort, Motpy, ByteTrack, Norfair

PipeLine

alt text

How to use sample

Yolov5

Yolov4

YoloX

NanoDet

Deepsort :

Modify algorithm in Tracking_Pipeline/tracking_config.yaml

References

Owner
VNOpenAI
An open source team in Vietnam, focusing on AI-powered projects.
VNOpenAI
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