CVOct 12, 2020

CC-Loss: Channel Correlation Loss For Image Classification

arXiv:2010.05469v110 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for image classification tasks, addressing a specific limitation in loss function design.

The authors tackled the problem of existing loss functions not considering connections between feature distribution and model structure by proposing CC-Loss, which constrains relations between classes and channels while maintaining intra-class and inter-class separability, and experimental results show it outperforms state-of-the-art loss functions on three image classification datasets.

The loss function is a key component in deep learning models. A commonly used loss function for classification is the cross entropy loss, which is a simple yet effective application of information theory for classification problems. Based on this loss, many other loss functions have been proposed,~\emph{e.g.}, by adding intra-class and inter-class constraints to enhance the discriminative ability of the learned features. However, these loss functions fail to consider the connections between the feature distribution and the model structure. Aiming at addressing this problem, we propose a channel correlation loss (CC-Loss) that is able to constrain the specific relations between classes and channels as well as maintain the intra-class and the inter-class separability. CC-Loss uses a channel attention module to generate channel attention of features for each sample in the training stage. Next, an Euclidean distance matrix is calculated to make the channel attention vectors associated with the same class become identical and to increase the difference between different classes. Finally, we obtain a feature embedding with good intra-class compactness and inter-class separability.Experimental results show that two different backbone models trained with the proposed CC-Loss outperform the state-of-the-art loss functions on three image classification datasets.

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