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Combining Similarity and Adversarial Learning to Generate Visual Explanation: Application to Medical Image Classification

机译:结合相似性和对抗性学习生成可视化解释:应用于医学图像分类

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Explaining decisions of black-box classifiers is paramount in sensitive domains such as medical imaging since clinicians confidence is necessary for adoption. Various explanation approaches have been proposed, among which perturbation based approaches are very promising. Within this class of methods, we leverage a learning framework to produce our visual explanations method. From a given classifier, we train two generators to produce from an input image the so called similar and adversarial images. The similar image shall be classified as the input image whereas the adversarial shall not. Visual explanation is built as the difference between these two generated images. Using metrics from the literature, our method outperforms state-of-the-art approaches. The proposed approach is model-agnostic and has a low computation burden at prediction time. Thus, it is adapted for real-time systems. Finally, we show that random geometric augmentations applied to the original image play a regularization role that improves several previously proposed explanation methods. We validate our approach on a large chest X-ray database.
机译:解释黑匣子分类器的决定是在敏感域中的敏感域至关重要,因为临床医生的信心是采用所必需的。已经提出了各种解释方法,其中基于扰动的方法非常有前途。在这类方法中,我们利用学习框架来生产我们的视觉解释方法。从给定的分类器,我们训练两个发电机从输入图像中产生所谓的类似和对抗图像。类似的图像应被归类为输入图像,而对抗性则不得。视觉解释建立为这两个生成的图像之间的差异。使用文献中的指标,我们的方法优于最先进的方法。所提出的方法是模型 - 不可行的,并且在预测时间具有低计算负担。因此,它适用于实时系统。最后,我们显示应用于原始图像的随机几何增强播放了呈现若干先前提出的解释方法的正则化作用。我们在大型胸部X射线数据库上验证了我们的方法。

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