相关性凸轮:你的模型已经知道去哪里看

J. Lee, Sewon Kim, I. Park, Taejoon Eo, D. Hwang
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引用次数: 39

摘要

随着神经网络应用领域的增加和神经网络的发展,解释深度学习模型的能力也变得越来越重要。特别是在实际应用之前,分析模型的推理和产生结果的过程是至关重要的。一种常见的解释方法是基于类激活映射(Class Activation Mapping, CAM)的方法,它通常用于理解计算机视觉领域流行的卷积神经网络的最后一层。在本文中,我们提出了一种新的CAM方法,即关联加权类激活映射(Relevance-CAM),该方法利用分层关联传播来获得加权分量。这使得解释图对破碎梯度问题具有忠实性和鲁棒性,这是基于梯度的CAM方法的一个共同问题,它会导致中间层的显着性图产生噪声。因此,我们提出的方法可以通过正确分析中间层和最后一层卷积层来更好地解释模型。在本文中,我们可视化了流行的图像处理模型的每一层是如何使用Relevance-CAM提取类特定特征的,评估了定位能力,并通过实验加权分量证明了为什么基于梯度的CAM不能用于解释中间层。在任意深度层的识别和定位评价方面,相关性- cam优于其他基于cam的方法。源代码可从https://github.com/mongeoroo/Relevance-CAM获得
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Relevance-CAM: Your Model Already Knows Where to Look
With increasing fields of application for neural networks and the development of neural networks, the ability to explain deep learning models is also becoming increasingly important. Especially, prior to practical applications, it is crucial to analyze a model’s inference and the process of generating the results. A common explanation method is Class Activation Mapping(CAM) based method where it is often used to understand the last layer of the convolutional neural networks popular in the field of Computer Vision. In this paper, we propose a novel CAM method named Relevance-weighted Class Activation Mapping(Relevance-CAM) that utilizes Layer-wise Relevance Propagation to obtain the weighting components. This allows the explanation map to be faithful and robust to the shattered gradient problem, a shared problem of the gradient based CAM methods that causes noisy saliency maps for intermediate layers. Therefore, our proposed method can better explain a model by correctly analyzing the intermediate layers as well as the last convolutional layer. In this paper, we visualize how each layer of the popular image processing models extracts class specific features using Relevance-CAM, evaluate the localization ability, and show why the gradient based CAM cannot be used to explain the intermediate layers, proven by experimenting the weighting component. Relevance-CAM outperforms other CAM-based methods in recognition and localization evaluation in layers of any depth. The source code is available at: https://github.com/mongeoroo/Relevance-CAM
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