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      On the Utility of Equivariance and Symmetry Breaking in Deep Learning Architectures on Point Clouds

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          Abstract

          This paper explores the key factors that influence the performance of models working with point clouds, across different tasks of varying geometric complexity. In this work, we explore the trade-offs between flexibility and weight-sharing introduced by equivariant layers, assessing when equivariance boosts or detracts from performance. It is often argued that providing more information as input improves a model's performance. However, if this additional information breaks certain properties, such as \SE(3) equivariance, does it remain beneficial? We identify the key aspects of equivariant and non-equivariant architectures that drive success in different tasks by benchmarking them on segmentation, regression, and generation tasks across multiple datasets with increasing complexity. We observe a positive impact of equivariance, which becomes more pronounced with increasing task complexity, even when strict equivariance is not required.

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          Author and article information

          Journal
          01 January 2025
          Article
          2501.01999
          06e2ceb7-9dc6-4dd1-a628-a3401a2956f7

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          21 pages, 5 figures
          cs.CV cs.AI cs.LG

          Computer vision & Pattern recognition,Artificial intelligence
          Computer vision & Pattern recognition, Artificial intelligence

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