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1st Place Solutions for UG2+ Challenge 2021 -- (Semi-)supervised Face detection in the low light condition

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 Added by Pengcheng Wang
 Publication date 2021
and research's language is English




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In this technical report, we briefly introduce the solution of our team TAL-ai for (Semi-) supervised Face detection in the low light condition in UG2+ Challenge in CVPR 2021. By conducting several experiments with popular image enhancement methods and image transfer methods, we pulled the low light image and the normal image to a more closer domain. And it is observed that using these data to training can achieve better performance. We also adapt several popular object detection frameworks, e.g., DetectoRS, Cascade-RCNN, and large backbone like Swin-transformer. Finally, we ensemble several models which achieved mAP 74.89 on the testing set, ranking 1st on the final leaderboard.



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