Authors
Bo Wang, Chunfeng Yuan, Bing Li, Xinmiao Ding, Zeya Li, Ying Wu, Weiming Hu
Publication date
2021/6/29
Journal
IEEE Transactions on Image Processing
Volume
30
Pages
6050-6065
Publisher
IEEE
Description
For weakly supervised object localization (WSOL), how to avoid the network focusing only on some small discriminative parts is a main challenge needed to solve. The widely-used Class Activation Mapping (CAM) based paradigm usually employs Adversarial Learning (AL) strategy to search more object parts by constantly hiding discovered object features, but the adversarial process is difficult to control. In this paper, we propose a novel CAM-based framework with Multi-scale Low-Discriminative Feature Reactivation (mLDFR) for WSOL. The mLDFR framework reactivates the low-discriminative object parts via bottom-up continuous feature maps recalibration and multi-scale object category mapping. Compared with the AL-based methods, our method fully improves the localization power of the network without damaging the classification power and can perform multi-instance localization, which are hard to achieve …
Total citations
202220232024172
Scholar articles
B Wang, C Yuan, B Li, X Ding, Z Li, Y Wu, W Hu - IEEE Transactions on Image Processing, 2021