CVOct 30, 2024

Deep Learning for 3D Point Cloud Enhancement: A Survey

arXiv:2411.00857v15 citationsh-index: 13
Originality Synthesis-oriented
AI Analysis

It provides a systematic review and taxonomy for researchers in 3D vision, but it is incremental as it surveys existing work without introducing new methods.

This paper presents a comprehensive survey of deep-learning-based methods for enhancing 3D point clouds, addressing issues like sparsity, noise, and incompleteness to improve downstream processing tasks.

Point cloud data now are popular data representations in a number of three-dimensional (3D) vision research realms. However, due to the limited performance of sensors and sensing noise, the raw data usually suffer from sparsity, noise, and incompleteness. This poses great challenges to down-stream point cloud processing tasks. In recent years, deep-learning-based point cloud enhancement methods, which aim to achieve dense, clean, and complete point clouds from low-quality raw point clouds using deep neural networks, are gaining tremendous research attention. This paper, for the first time to our knowledge, presents a comprehensive survey for deep-learning-based point cloud enhancement methods. It covers three main perspectives for point cloud enhancement, i.e., (1) denoising to achieve clean data; (2) completion to recover unseen data; (3) upsampling to obtain dense data. Our survey presents a new taxonomy for recent state-of-the-art methods and systematic experimental results on standard benchmarks. In addition, we share our insightful observations, thoughts, and inspiring future research directions for point cloud enhancement with deep learning.

Foundations

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