Clustering-inspired channel selection method for weakly supervised object localization

Xiaofeng Wang, Zhe Liu, Xiangru Qiao, Zhiquan Li, Sidong Wu, Jiao Zhang,Yonghuai Liu,Zhan Li, Hongbo Guo,Huaizhong Zhang

Pattern Recognition Letters(2024)

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摘要
Weakly Supervised Object Localization (WSOL) aims to utilize the features learned by a classifier on the image-level labels to locate target objects. However, these existing channel selection methods for WSOL still cannot effectively select the important channels and remove the unimportant ones. To address this issue, we propose a Clustering-inspired Channel Selection method based on Class Activation Maps (CCS-CAM). Compared with the traditional methods, the advantage of CCS-CAM is that it is very simple yet effective for channel selection due to the K-means clustering based on Class Activation Maps. It can effectively ensure both object localization and classification accuracy. The effectiveness of the proposed CCS-CAM method has been demonstrated using multiple public datasets, with GT-Know Loc reaching 87.9% and 63.71% on the CUB200-2011 and ImageNet-1k, which is superior to the other state-of-the-art Methods.
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关键词
Class activation map,Weakly supervised object localization,Image classification,Channel selection,Clustering-inspired
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