Do Noises Bother Human and Neural Networks In the Same Way? A Medical Image Analysis Perspective
This addresses the issue for medical image analysis where denoising is optimized for neural networks rather than human perception, representing an incremental improvement over prior methods.
The paper tackles the problem that existing medical image denoising methods are designed for human vision, not for neural networks, by introducing an application-guided denoising framework. The result shows that this framework achieves better performance than human-vision denoising networks in experiments across datasets, models, and use cases.
Deep learning had already demonstrated its power in medical images, including denoising, classification, segmentation, etc. All these applications are proposed to automatically analyze medical images beforehand, which brings more information to radiologists during clinical assessment for accuracy improvement. Recently, many medical denoising methods had shown their significant artifact reduction result and noise removal both quantitatively and qualitatively. However, those existing methods are developed around human-vision, i.e., they are designed to minimize the noise effect that can be perceived by human eyes. In this paper, we introduce an application-guided denoising framework, which focuses on denoising for the following neural networks. In our experiments, we apply the proposed framework to different datasets, models, and use cases. Experimental results show that our proposed framework can achieve a better result than human-vision denoising network.