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Apply OWL-ViT To Images Project

Class-angnostic object detection model

apps neural network object detection interactive detection inference interfaces images
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Readme Releases 36

Details

  • Module ID243
  • Released from CLI
  • Released on2023-04-10 17:46:55
  • Last updated2025-03-06 16:49:13
  • Docker imagesupervisely/base-py-sdk:6.73.304

Requirements

  • Instance version6.12.28
  • Needs GPU No

Resources

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  • Documentation

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