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MinCD-PnP: Learning 2D-3D Correspondences with Approximate Blind PnP

About

Image-to-point-cloud (I2P) registration is a fundamental problem in computer vision, focusing on establishing 2D-3D correspondences between an image and a point cloud. The differential perspective-n-point (PnP) has been widely used to supervise I2P registration networks by enforcing the projective constraints on 2D-3D correspondences. However, differential PnP is highly sensitive to noise and outliers in the predicted correspondences. This issue hinders the effectiveness of correspondence learning. Inspired by the robustness of blind PnP against noise and outliers in correspondences, we propose an approximated blind PnP based correspondence learning approach. To mitigate the high computational cost of blind PnP, we simplify blind PnP to an amenable task of minimizing Chamfer distance between learned 2D and 3D keypoints, called MinCD-PnP. To effectively solve MinCD-PnP, we design a lightweight multi-task learning module, named as MinCD-Net, which can be easily integrated into the existing I2P registration architectures. Extensive experiments on 7-Scenes, RGBD-V2, ScanNet, and self-collected datasets demonstrate that MinCD-Net outperforms state-of-the-art methods and achieves a higher inlier ratio (IR) and registration recall (RR) in both cross-scene and cross-dataset settings.

Pei An, Jiaqi Yang, Muyao Peng, You Yang, Qiong Liu, Xiaolin Wu, Liangliang Nan• 2025

Related benchmarks

TaskDatasetResultRank
I2P RegistrationScanNet
IR46.8
12
I2P Registration7-Scenes Kitchen
IR (K→C)61.7
6
I2P Registration7-Scenes Office
Inlier Ratio (O→C)66
5
I2P Registration7-Scenes Chess
Inlier Ratio (C→F)54.2
5
I2P RegistrationRGBD V2
IR37.1
4
I2P RegistrationSelf-collected dataset
IR51.6
4
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