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ISDA: Position-Aware Instance Segmentation with Deformable Attention

2022-02-23Code Available0· sign in to hype

Kaining Ying, Zhenhua Wang, Cong Bai, Pengfei Zhou

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Abstract

Most instance segmentation models are not end-to-end trainable due to either the incorporation of proposal estimation (RPN) as a pre-processing or non-maximum suppression (NMS) as a post-processing. Here we propose a novel end-to-end instance segmentation method termed ISDA. It reshapes the task into predicting a set of object masks, which are generated via traditional convolution operation with learned position-aware kernels and features of objects. Such kernels and features are learned by leveraging a deformable attention network with multi-scale representation. Thanks to the introduced set-prediction mechanism, the proposed method is NMS-free. Empirically, ISDA outperforms Mask R-CNN (the strong baseline) by 2.6 points on MS-COCO, and achieves leading performance compared with recent models. Code will be available soon.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
COCO test-devISDA (ours)mask AP38.7Unverified
COCO test-devISDA (ResNet-50)APL55.7Unverified

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