AI Article Synopsis

  • CO-Net++ is a framework designed to optimize various point cloud tasks simultaneously by using a two-stage feature rectification strategy that separates task-shared and task-specific parameters.
  • The first stage focuses on configuring all parameters as task-shared to capture universal features, while the second stage integrates task-specific parameters to handle unique characteristics of different datasets.
  • This approach not only improves performance in 3D object detection and segmentation but also enhances learning capabilities, preventing the loss of previously learned information when adapting to new tasks.

Article Abstract

We present CO-Net++, a cohesive framework that optimizes multiple point cloud tasks collectively across heterogeneous dataset domains with a two-stage feature rectification strategy. The core of CO-Net++ lies in optimizing task-shared parameters to capture universal features across various tasks while discerning task-specific parameters tailored to encapsulate the unique characteristics of each task. Specifically, CO-Net++ develops a two-stage feature rectification strategy (TFRS) that distinctly separates the optimization processes for task-shared and task-specific parameters. At the first stage, TFRS configures all parameters in backbone as task-shared, which encourages CO-Net++ to thoroughly assimilate universal attributes pertinent to all tasks. In addition, TFRS introduces a sign-based gradient surgery to facilitate the optimization of task-shared parameters, thus alleviating conflicting gradients induced by various dataset domains. In the second stage, TFRS freezes task-shared parameters and flexibly integrates task-specific parameters into the network for encoding specific characteristics of each dataset domain. CO-Net++ prominently mitigates conflicting optimization caused by parameter entanglement, ensuring the sufficient identification of universal and specific features. Extensive experiments reveal that CO-Net++ realizes exceptional performances on both 3D object detection and 3D semantic segmentation tasks. Moreover, CO-Net++ delivers an impressive incremental learning capability and prevents catastrophic amnesia when generalizing to new point cloud tasks.

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Source
http://dx.doi.org/10.1109/TPAMI.2024.3447008DOI Listing

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