Diffusion unit: Interpretable edge enhancement and suppression learning for 3D point cloud segmentation
Neurocomputing, ISSN: 0925-2312, Vol: 559, Page: 126780
2023
- 7Citations
- 14Captures
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Example: if you select the 1-year option for an article published in 2019 and a metric category shows 90%, that means that the article or review is performing better than 90% of the other articles/reviews published in that journal in 2019. If you select the 3-year option for the same article published in 2019 and the metric category shows 90%, that means that the article or review is performing better than 90% of the other articles/reviews published in that journal in 2019, 2018 and 2017.
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Article Description
3D point clouds are discrete samples of continuous surfaces which can be used for various applications. However, the lack of true connectivity information, i.e., edge information, makes point cloud recognition challenging. Recent edge-aware methods incorporate edge modeling into network designs to better describe local structures. Although these methods show that incorporating edge information is beneficial, how edge information helps remains unclear, making it difficult for users to analyze its usefulness. To shed light on this issue, in this study, we propose a new algorithm called Diffusion Unit (DU) that handles edge information in a principled and interpretable manner while providing decent improvement. First, we theoretically show that DU learns to perform task-beneficial edge enhancement and suppression. Second, we experimentally observe and verify the edge enhancement and suppression behavior. Third, we empirically demonstrate that this behavior contributes to performance improvement. Extensive experiments and analyses performed on challenging benchmarks verify the effectiveness of DU. Specifically, our method achieves state-of-the-art performance in object part segmentation using ShapeNet part and scene segmentation using S3DIS. Our source code is available at https://github.com/martianxiu/DiffusionUnit.
Bibliographic Details
http://www.sciencedirect.com/science/article/pii/S0925231223009037; http://dx.doi.org/10.1016/j.neucom.2023.126780; http://www.scopus.com/inward/record.url?partnerID=HzOxMe3b&scp=85172309848&origin=inward; https://linkinghub.elsevier.com/retrieve/pii/S0925231223009037; https://dx.doi.org/10.1016/j.neucom.2023.126780
Elsevier BV
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