使用基于梯度的可视化解释点云的深度神经网络

Jawad Tayyub, M. Sarmad, Nicolas Schonborn
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引用次数: 3

摘要

解释由深度神经网络做出的决定是一个快速发展的研究课题。近年来,有几种方法试图为为结构化二维图像输入数据设计的神经网络所做的决策提供视觉解释。在本文中,我们提出了一种新的方法来生成用于分类非结构化3D数据(即点云)的网络的粗视觉解释。我们的方法使用流向最终特征映射层的梯度,并将这些值映射为输入点云中相应点的贡献。由于输入点和最终特征图之间的维数不一致和缺乏空间一致性,我们的方法结合梯度和点下降来迭代计算点云不同部分的解释。我们的方法的通用性在各种点云分类网络上进行了测试,包括“单对象”网络PointNet、pointnet++、DGCNN和“场景”网络VoteNet。我们的方法生成对称的解释图,突出了重要的区域,并提供了对网络架构决策过程的洞察。我们使用定量、定量和人类研究对我们的解释方法的信任和可解释性进行了详尽的评估。我们所有的代码都在PyTorch中实现,并将公开提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explaining Deep Neural Networks for Point Clouds using Gradient-based Visualisations
Explaining decisions made by deep neural networks is a rapidly advancing research topic. In recent years, several approaches have attempted to provide visual explanations of decisions made by neural networks designed for structured 2D image input data. In this paper, we propose a novel approach to generate coarse visual explanations of networks designed to classify unstructured 3D data, namely point clouds. Our method uses gradients flowing back to the final feature map layers and maps these values as contributions of the corresponding points in the input point cloud. Due to dimensionality disagreement and lack of spatial consistency between input points and final feature maps, our approach combines gradients with points dropping to compute explanations of different parts of the point cloud iteratively. The generality of our approach is tested on various point cloud classification networks, including 'single object' networks PointNet, PointNet++, DGCNN, and a 'scene' network VoteNet. Our method generates symmetric explanation maps that highlight important regions and provide insight into the decision-making process of network architectures. We perform an exhaustive evaluation of trust and interpretability of our explanation method against comparative approaches using quantitative, quantitative and human studies. All our code is implemented in PyTorch and will be made publicly available.
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