Multi-Scale Sample Selection Based On Statistical Characteristics For Object Detection
Zhiguo Li, Yuan Yuan, Dandan Ma
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In the domain of object detection, automatically selecting positive and negative samples methods have become a hot research topic in recent years. However, most of them focus on improving the sampling process but ignore the relationship between object size and feature map, in which the shallow and deep feature layers can capture small and large size objects well, respectively. In this paper, we propose a multi-scale sample selection based on statistical characteristics for object detection. To improve the robustness of the Intersection over Union (IoU) threshold, we design a multi-scale sample selection module (MSSM), which takes full advantage of different feature layers. Besides, we introduce a multi-scale attention module (MSAM) by embedding in the feature pyramid networks (FPN) to improve the efficiency of feature fusion. Experiments on MS COCO dataset demonstrate that our method achieves significant improvement over the state-of-the-art methods.
Chairs:
Karl Ni