Deep Learning for 3D Point Cloud Understanding: A Survey
- URL: http://arxiv.org/abs/2009.08920v2
- Date: Sun, 23 May 2021 15:04:30 GMT
- Title: Deep Learning for 3D Point Cloud Understanding: A Survey
- Authors: Haoming Lu, Humphrey Shi
- Abstract summary: The development of practical applications, such as autonomous driving and robotics, has brought increasing attention to 3D point cloud understanding.
Deep learning has achieved remarkable success on image-based tasks, but there are many unique challenges faced by deep neural networks in processing massive, unstructured and noisy 3D points.
This paper summarizes recent remarkable research contributions in this area from several different directions.
- Score: 16.35767262996978
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The development of practical applications, such as autonomous driving and
robotics, has brought increasing attention to 3D point cloud understanding.
While deep learning has achieved remarkable success on image-based tasks, there
are many unique challenges faced by deep neural networks in processing massive,
unstructured and noisy 3D points. To demonstrate the latest progress of deep
learning for 3D point cloud understanding, this paper summarizes recent
remarkable research contributions in this area from several different
directions (classification, segmentation, detection, tracking, flow estimation,
registration, augmentation and completion), together with commonly used
datasets, metrics and state-of-the-art performances. More information regarding
this survey can be found at:
https://github.com/SHI-Labs/3D-Point-Cloud-Learning.
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