Wavelet Integrated CNNs for Noise-Robust Image Classification
This work addresses noise robustness in image classification for applications in noisy environments, representing an incremental improvement by modifying existing CNN architectures.
The authors tackled the problem of CNNs being sensitive to image noise by integrating Discrete Wavelet Transform layers to replace traditional down-sampling methods, resulting in WaveCNets that achieved higher accuracy and better noise-robustness on ImageNet and ImageNet-C compared to vanilla versions.
Convolutional Neural Networks (CNNs) are generally prone to noise interruptions, i.e., small image noise can cause drastic changes in the output. To suppress the noise effect to the final predication, we enhance CNNs by replacing max-pooling, strided-convolution, and average-pooling with Discrete Wavelet Transform (DWT). We present general DWT and Inverse DWT (IDWT) layers applicable to various wavelets like Haar, Daubechies, and Cohen, etc., and design wavelet integrated CNNs (WaveCNets) using these layers for image classification. In WaveCNets, feature maps are decomposed into the low-frequency and high-frequency components during the down-sampling. The low-frequency component stores main information including the basic object structures, which is transmitted into the subsequent layers to extract robust high-level features. The high-frequency components, containing most of the data noise, are dropped during inference to improve the noise-robustness of the WaveCNets. Our experimental results on ImageNet and ImageNet-C (the noisy version of ImageNet) show that WaveCNets, the wavelet integrated versions of VGG, ResNets, and DenseNet, achieve higher accuracy and better noise-robustness than their vanilla versions.