UBDC How to Guides - YOLOv4 Object Detection Model

In this guide, Data Analyst Maralbek Zeinullin shows you how to install and run customised YOLOv4 Object Detection Model using GPU.

Being able to detect objects in CCTV footage enables us to study the flow of people and vehicles at a location without multiple picture passes.

Learning outcomes:

  • Install drivers and utilise GPU.
  • Run the customised model to identify objects such as pedestrians, vehicles and cyclists in footage.

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