UP-DETR: Unsupervised 'Random Query Patch Detection' Pretrains Transformers for Object Detection | Synced

UP-DETR: Unsupervised 'Random Query Patch Detection' Pretrains Transformers for Object Detection | Synced

A new study by South China University of Technology and Tencent WeChat AI researchers is the latest fruitful attempt to utilize transformer architectures in object detection.

1 mentions: @Synced_Global
Date: 2020/11/20 23:26

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@Synced_Global A new study by South China University of Technology and Tencent WeChat AI researchers is the latest fruitful attempt to utilize transformer architectures in object detection. #AI #MachineLearning #ComputerVision t.co/t0DtgEuv5A

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