CAM-loss: Towards Learning Spatially Discriminative Feature Representations
This work addresses the need for more effective feature learning in image classification, offering an incremental improvement with broad applicability to existing CNN architectures.
The paper tackles the problem of learning spatially discriminative feature representations in CNNs by introducing CAM-loss, which uses class activation maps to enhance feature discriminability, resulting in improved performance across various network structures and tasks like transfer and few-shot learning.
The backbone of traditional CNN classifier is generally considered as a feature extractor, followed by a linear layer which performs the classification. We propose a novel loss function, termed as CAM-loss, to constrain the embedded feature maps with the class activation maps (CAMs) which indicate the spatially discriminative regions of an image for particular categories. CAM-loss drives the backbone to express the features of target category and suppress the features of non-target categories or background, so as to obtain more discriminative feature representations. It can be simply applied in any CNN architecture with neglectable additional parameters and calculations. Experimental results show that CAM-loss is applicable to a variety of network structures and can be combined with mainstream regularization methods to improve the performance of image classification. The strong generalization ability of CAM-loss is validated in the transfer learning and few shot learning tasks. Based on CAM-loss, we also propose a novel CAAM-CAM matching knowledge distillation method. This method directly uses the CAM generated by the teacher network to supervise the CAAM generated by the student network, which effectively improves the accuracy and convergence rate of the student network.