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IMFNet: Interpretable Multimodal Fusion for Point Cloud Registration

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The existing state-of-the-art point descriptor relies on structure information only, which omit the texture information. However, texture information is crucial for our humans to distinguish a scene part. Moreover, the current learning-based point descriptors are all black boxes which are unclear how the original points contribute to the final descriptor. In this paper, we propose a new multimodal fusion method to generate a point cloud registration descriptor by considering both structure and texture information. Specifically, a novel attention-fusion module is designed to extract the weighted texture information for the descriptor extraction. In addition, we propose an interpretable module to explain the original points in contributing to the final descriptor. We use the descriptor element as the loss to backpropagate to the target layer and consider the gradient as the significance of this point to the final descriptor. This paper moves one step further to explainable deep learning in the registration task. Comprehensive experiments on 3DMatch, 3DLoMatch and KITTI demonstrate that the multimodal fusion descriptor achieves state-of-the-art accuracy and improve the descriptor's distinctiveness. We also demonstrate that our interpretable module in explaining the registration descriptor extraction.

Xiaoshui Huang, Wentao Qu, Yifan Zuo, Yuming Fang, Xiaowei Zhao• 2021

Related benchmarks

TaskDatasetResultRank
Point cloud registration3DLoMatch (test)--
287
Feature Matching3DMatch (Origin)
STD1.8
33
3D Point Cloud RegistrationKITTI (test)
RTE Avg (cm)5.77
26
Descriptor matching3DMatch Rotated
STD1.5
18
Point Cloud Feature Extraction3DMatch (test)
Total Execution Time39.98
9
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