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Article type: Research Article
Authors: Fan, Linkun | He, Fazhi* | Song, Yupeng | Xu, Huangxinxin | Li, Bing*
Affiliations: School of Computer Science, Wuhan University, Wuhan, Hubei, China
Correspondence: [*] Corresponding authors: Fazhi He and Bing Li, School of Computer Science, Wuhan University, Wuhan, Hubei, China. E-mail: [email protected].cn and [email protected].
Abstract: The 3D point cloud deep neural network (3D DNN) has achieved remarkable success, but its black-box nature hinders its application in many safety-critical domains. The saliency map technique is a key method to look inside the black-box and determine where a 3D DNN focuses when recognizing a point cloud. Existing point-wise point cloud saliency methods are proposed to illustrate the point-wise saliency for a given 3D DNN. However, the above critical points are alternative and unreliable. The findings are grounded on our experimental results which show that a point becomes critical because it is responsible for representing one specific local structure. However, one local structure does not have to be represented by some specific points, conversely. As a result, discussing the saliency of the local structure (named patch-wise saliency) represented by critical points is more meaningful than discussing the saliency of some specific points. Based on the above motivations, this paper designs a black-box algorithm to generate patch-wise saliency map for point clouds. Our basic idea is to design the Mask Building-Dropping process, which adaptively matches the size of important/unimportant patches by clustering points with close saliency. Experimental results on several typical 3D DNNs show that our patch-wise saliency algorithm can provide better visual guidance, and can detect where a 3D DNN is focusing more efficiently than a point-wise saliency map. Finally, we apply our patch-wise saliency map to adversarial attacks and backdoor defenses. The results show that the improvement is significant.
Keywords: Saliency map, point cloud, deep neural network, critical points, adversarial attack
DOI: 10.3233/ICA-230725
Journal: Integrated Computer-Aided Engineering, vol. 31, no. 2, pp. 197-212, 2024
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