XAI for Point Cloud Data using Perturbations based on Meaningful Segmentation
Raju Ningappa Mulawade, Christoph Garth, Alexander Wiebel

TL;DR
This paper introduces a segmentation-based XAI method for point cloud classification that uses a novel point-shifting perturbation technique to produce human-interpretable explanations and saliency maps.
Contribution
It presents a new point-shifting mechanism for perturbations and leverages meaningful segmentation to generate more interpretable explanations for 3D object classification.
Findings
The proposed method produces more meaningful and interpretable saliency maps.
It outperforms classical clustering algorithms in generating explanations.
Saliency maps effectively highlight important segments influencing classification.
Abstract
We propose a novel segmentation-based explainable artificial intelligence (XAI) method for neural networks working on point cloud classification. As one building block of this method, we propose a novel point-shifting mechanism to introduce perturbations in point cloud data. Recently, AI has seen an exponential growth. Hence, it is important to understand the decision-making process of AI algorithms when they are applied in critical areas. Our work focuses on explaining AI algorithms that classify point cloud data. An important aspect of the methods used for explaining AI algorithms is their ability to produce explanations that are easy for humans to understand. This allows them to analyze the AI algorithms better and make appropriate decisions based on that analysis. Therefore, in this work, we intend to generate meaningful explanations that can be easily interpreted by humans. The…
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