D3Feat: Joint Learning of Dense Detection and Description of 3D Local Features
Hong Kong University of Science and Technology · City University of Hong Kong
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…
Citation impact
- FWCI
- 376.31
- Percentile
- 100%
- References
- 48
Authors
6Topics & keywords
- Point cloud
- Computer science
- Artificial intelligence
- Leverage (statistics)
- Discriminative model
- Feature learning
- Feature (linguistics)
- Pattern recognition (psychology)
- Reduced inequalities