Attribution map visualization has arisen as one of the most effective techniques to understand the underlying inference process of Convolutional Neural Networks. In this task, the goal is to compute an score for each image pixel related with its contribution to the final network output. In this paper, we introduce Disentangled Masked Backpropagation (DMBP), a novel gradient-based method that leverages on the piecewise linear nature of ReLU networks to decompose the model function into different linear mappings. This decomposition aims to disentangle the positive, negative and nuisance factors from the attribution maps by learning a set of variables masking the contribution of each filter during back-propagation. A thorough evaluation over standard architectures (ResNet50 and VGG16) and benchmark datasets (PASCAL VOC and ImageNet) demonstrates that DMBP generates more visually interpretable attribution maps than previous approaches. Additionally, we quantitatively show that the maps produced by our method are more consistent with the true contribution of each pixel to the final network output.
翻译:归国图的可视化是了解进化神经网络基本推论过程的最有效方法之一。 在这项任务中,目标是计算每个图像像素的得分及其对最后网络输出的贡献。 在本文中,我们引入了分解的蒙面背对映法(DMBP),这是一种新的梯度法,它利用ReLU网络的片断线性线性将模型函数分解成不同的线性绘图。这种分解的目的是通过学习一套变量,掩盖每个过滤器在回向调整期间的贡献,将正数、负数和扰动因素与归国图相混淆。对标准结构(ResNet50和VGG16)和基准数据集(PASCAL VOC和图像Net)的彻底评估表明,DMBPS生成的可直观化属性地图比以往的方法要多。 此外,我们量化地表明,我们方法制作的地图与每个像素对最后网络输出的真正贡献更加一致。