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Salience DETR: Enhancing Detection Transformer with Hierarchical Salience Filtering Refinement

2024-03-24CVPR 2024Code Available3· sign in to hype

Xiuquan Hou, Meiqin Liu, Senlin Zhang, Ping Wei, Badong Chen

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Abstract

DETR-like methods have significantly increased detection performance in an end-to-end manner. The mainstream two-stage frameworks of them perform dense self-attention and select a fraction of queries for sparse cross-attention, which is proven effective for improving performance but also introduces a heavy computational burden and high dependence on stable query selection. This paper demonstrates that suboptimal two-stage selection strategies result in scale bias and redundancy due to the mismatch between selected queries and objects in two-stage initialization. To address these issues, we propose hierarchical salience filtering refinement, which performs transformer encoding only on filtered discriminative queries, for a better trade-off between computational efficiency and precision. The filtering process overcomes scale bias through a novel scale-independent salience supervision. To compensate for the semantic misalignment among queries, we introduce elaborate query refinement modules for stable two-stage initialization. Based on above improvements, the proposed Salience DETR achieves significant improvements of +4.0% AP, +0.2% AP, +4.4% AP on three challenging task-specific detection datasets, as well as 49.2% AP on COCO 2017 with less FLOPs. The code is available at https://github.com/xiuqhou/Salience-DETR.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
COCO 2017 valSalience-DETR (Focal-L 1x)AP57.3Unverified
COCO 2017 valSalience-DETR (Swin-L 1x)AP56.5Unverified
COCO 2017 valSalience-DETR (ResNet50 1x)AP50Unverified

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