首页 > 资源库 > 研究论文 > SignatureActivation:ASparseSignalViewforHolisticSaliency

SignatureActivation:ASparseSignalViewforHolisticSaliency

2023-09-21
The adoption of machine learning in healthcare calls for model transparency and explainability. In this work, we introduce Signature Activation, a saliency method that generates holistic and class-agnostic explanations for Convolutional Neural Network (CNN) outputs. Our method exploits the fact that certain kinds of medical images, such as angiograms, have clear foreground and background objects. We give theoretical explanation to justify our methods. We show the potential use of our method in clinical settings through evaluating its efficacy for aiding the detection of lesions in coronary angiograms.
Tags:
相关推荐

热门文章