Litcius/Paper detail

Boosting 3D Point Cloud Registration by Transferring Multi-modality Knowledge

Mingzhi Yuan, Xiaoshui Huang, Kexue Fu, Zhihao Li, Manning Wang

202317 citationsDOI

Abstract

The recent multi-modality models have achieved great performance in many vision tasks because the extracted features contain the multi-modality knowledge. However, most of the current registration descriptors have only concentrated on local geometric structures. This paper proposes a method to boost point cloud registration accuracy by transferring the multi-modality knowledge of pre-trained multi-modality model to a new descriptor neural network. Different to the previous multi-modality methods that requires both modalities, the proposed method only requires point clouds during inference. Specifically, we propose an ensemble descriptor neural network combining pre-trained sparse convolution branch and a new point-based convolution branch. By fine-tuning on a single modality data, the proposed method achieves new state-of-the-art results on 3DMatch and competitive accuracy on 3DLoMatch and KITTI. The code and the trained model will be released at https://github.com/phdymz/DBENet.git.

Topics & Concepts

Modality (human–computer interaction)Computer sciencePoint cloudArtificial intelligenceBoosting (machine learning)InferenceConvolution (computer science)Artificial neural networkPoint (geometry)Convolutional neural networkComputer visionModalitiesPattern recognition (psychology)MathematicsSociologySocial scienceGeometryRobotics and Sensor-Based Localization3D Surveying and Cultural Heritage3D Shape Modeling and Analysis