Conclusion and Future Work
Shan Liu,
Min Zhang,
Pranav Kadam and
C.-C. Jay Kuo
Additional contact information
Shan Liu: Tencent Media Lab
Min Zhang: University of Southern California
Pranav Kadam: University of Southern California
C.-C. Jay Kuo: University of Southern California
Chapter Chapter 5 in 3D Point Cloud Analysis, 2021, pp 141-143 from Springer
Abstract:
Abstract 3D point clouds serve as an important data format in intelligent systems. Researchers are continually developing new ways of making point cloud analysis more effective and efficient. It is common for new researchers to focus only on Deep learningDeep learning methods while lacking a solid foundation of the fundamental knowledge of traditional methods. However, the traditional point cloud processing methods are the root of Deep learning Deep learning methods, and they are still widely used in the industry. In this book, we complete a detailed analysis on point cloud processing, covering traditional methods, Deep learning Deep learning methods, and our own explainable machine learning methods. In this chapter, we first summarize the book by discussing the advantages and disadvantages of the three types of methods. We hope the comparison and analysis of the three types of methods will help readers to gain a deeper understanding of this field. Next, we will provide some highlights for the future works in the field of point cloud learning, which may bring some insights to new researchers.
Date: 2021
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-3-030-89180-0_5
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DOI: 10.1007/978-3-030-89180-0_5
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