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Papers/D3Feat: Joint Learning of Dense Detection and Description ...

D3Feat: Joint Learning of Dense Detection and Description of 3D Local Features

Xuyang Bai, Zixin Luo, Lei Zhou, Hongbo Fu, Long Quan, Chiew-Lan Tai

2020-03-06CVPR 2020 6Point Cloud Registration
PaperPDFCode(official)Code

Abstract

A successful point cloud registration often lies on robust establishment of sparse matches through discriminative 3D local features. Despite the fast evolution of learning-based 3D feature descriptors, little attention has been drawn to the learning of 3D feature detectors, even less for a joint learning of the two tasks. In this paper, we leverage a 3D fully convolutional network for 3D point clouds, and propose a novel and practical learning mechanism that densely predicts both a detection score and a description feature for each 3D point. In particular, we propose a keypoint selection strategy that overcomes the inherent density variations of 3D point clouds, and further propose a self-supervised detector loss guided by the on-the-fly feature matching results during training. Finally, our method achieves state-of-the-art results in both indoor and outdoor scenarios, evaluated on 3DMatch and KITTI datasets, and shows its strong generalization ability on the ETH dataset. Towards practical use, we show that by adopting a reliable feature detector, sampling a smaller number of features is sufficient to achieve accurate and fast point cloud alignment.[code release](https://github.com/XuyangBai/D3Feat)

Results

TaskDatasetMetricValueModel
Point Cloud Registration3DMatch (trained on KITTI)Recall0.627D3Feat-pred
Point Cloud Registration3DLoMatch (10-30% overlap)Recall ( correspondence RMSE below 0.2)37.2D3Feat (reported in PREDATOR)
Point Cloud RegistrationKITTI (trained on 3DMatch)Success Rate36.76D3Feat-pred
Point Cloud Registration3DMatch BenchmarkFeature Matching Recall95.8D3Feat-Pred
Point Cloud Registration3DMatch BenchmarkFeature Matching Recall95.3D3Feat-rand
Point Cloud RegistrationETH (trained on 3DMatch)Feature Matching Recall0.563D3Feat-pred
Point Cloud Registration3DMatch (at least 30% overlapped - sample 5k interest points)Recall ( correspondence RMSE below 0.2)81.6D3Feat (reported in PREDATOR)
Point Cloud RegistrationKITTISuccess Rate99.81D3Feat-pred
3D Point Cloud Interpolation3DMatch (trained on KITTI)Recall0.627D3Feat-pred
3D Point Cloud Interpolation3DLoMatch (10-30% overlap)Recall ( correspondence RMSE below 0.2)37.2D3Feat (reported in PREDATOR)
3D Point Cloud InterpolationKITTI (trained on 3DMatch)Success Rate36.76D3Feat-pred
3D Point Cloud Interpolation3DMatch BenchmarkFeature Matching Recall95.8D3Feat-Pred
3D Point Cloud Interpolation3DMatch BenchmarkFeature Matching Recall95.3D3Feat-rand
3D Point Cloud InterpolationETH (trained on 3DMatch)Feature Matching Recall0.563D3Feat-pred
3D Point Cloud Interpolation3DMatch (at least 30% overlapped - sample 5k interest points)Recall ( correspondence RMSE below 0.2)81.6D3Feat (reported in PREDATOR)
3D Point Cloud InterpolationKITTISuccess Rate99.81D3Feat-pred

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