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5 months ago

CorrI2P: Deep Image-to-Point Cloud Registration via Dense Correspondence

Ren Siyu ; Zeng Yiming ; Hou Junhui ; Chen Xiaodong

CorrI2P: Deep Image-to-Point Cloud Registration via Dense Correspondence

Abstract

Motivated by the intuition that the critical step of localizing a 2D image inthe corresponding 3D point cloud is establishing 2D-3D correspondence betweenthem, we propose the first feature-based dense correspondence framework foraddressing the image-to-point cloud registration problem, dubbed CorrI2P, whichconsists of three modules, i.e., feature embedding, symmetric overlappingregion detection, and pose estimation through the established correspondence.Specifically, given a pair of a 2D image and a 3D point cloud, we firsttransform them into high-dimensional feature space and feed the resultingfeatures into a symmetric overlapping region detector to determine the regionwhere the image and point cloud overlap each other. Then we use the features ofthe overlapping regions to establish the 2D-3D correspondence before runningEPnP within RANSAC to estimate the camera's pose. Experimental results on KITTIand NuScenes datasets show that our CorrI2P outperforms state-of-the-artimage-to-point cloud registration methods significantly. We will make the codepublicly available.

Code Repositories

rsy6318/CorrI2P
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-to-point-cloud-registration-on-kittiCorrI2P
RRE: 2.07
RTE: 0.74

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CorrI2P: Deep Image-to-Point Cloud Registration via Dense Correspondence | Papers | HyperAI