1st Place Solution of LVIS Challenge 2020: A Good Box is not a Guarantee of a Good Mask

3 Sep 2020  ·  Jingru Tan, Gang Zhang, Hanming Deng, Changbao Wang, Lewei Lu, Quanquan Li, Jifeng Dai ·

This article introduces the solutions of the team lvisTraveler for LVIS Challenge 2020. In this work, two characteristics of LVIS dataset are mainly considered: the long-tailed distribution and high quality instance segmentation mask. We adopt a two-stage training pipeline. In the first stage, we incorporate EQL and self-training to learn generalized representation. In the second stage, we utilize Balanced GroupSoftmax to promote the classifier, and propose a novel proposal assignment strategy and a new balanced mask loss for mask head to get more precise mask predictions. Finally, we achieve 41.5 and 41.2 AP on LVIS v1.0 val and test-dev splits respectively, outperforming the baseline based on X101-FPN-MaskRCNN by a large margin.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Instance Segmentation LVIS v1.0 test-dev R50-FPN-MaskRCNN-TTA mask AP 41.23 # 1

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