计算机科学
人工智能
模式识别(心理学)
对象(语法)
目标检测
计算机视觉
作者
Guangqian Guo,Pengfei Chen,Xuehui Yu,Zhenjun Han,Qixiang Ye,Shan Gao
标识
DOI:10.1109/tcsvt.2023.3284161
摘要
Tiny object detection (TOD) remains a challenging problem due to the extremely small size and weak feature presentations of tiny objects. Many effective methods have improved the detection of small objects below $32\times 32$ pixels to some extent, but the performance is still poor for the tiny objects below $16\times 16$ pixels. In this paper, we find that the aliasing between the features and object scales, namely feature-scale-aliasing, leads to the misalignment between feature subspaces and detection subspaces, and thus results in the interference of features, especially for tiny objects. To alleviate this, we propose a Hierarchical Activation (HA) method to obtain scale-specific feature subspaces by activating object features at different scales hierarchically. To this end, we design a Scale-Guided Feature Activation (SGFA) to decompose the original object-aliasing feature spaces into a group of scale-specific feature subspaces by scale-guided activation maps. Then, Scale-Specific Feature re-Coupling (SSFC) is used to enhance the feature subspaces by adaptively aggregating the feature subspaces from different groups. In addition, we propose to complement the scale-specific detailed information by a designed Detailed Information Compensation (DIC) method. Implementing HA, a multi-scale keypoint-based detector is constructed to improve the tiny object detection, referred to as Hierarchical Activation Network (HANet). Extensive experiments are carried out on three tiny object detection datasets, e.g., TinyPerson, AI-TOD, and TinyCOCO. Our HANet achieves 58.45% $AP_{50}^{all}$ , 22.1% $AP$ , and 15.76% $AP$ on TinyPerson, AI-TOD, and TinyCOCO, respectively, showing a significant performance gain over the competitors.
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