Test-time adaptation methods have been gaining attention recently as a practical solution for addressing source-to-target domain gaps by gradually updating the model without requiring labels on the target data. In this paper, we propose a method of test-time adaptation for category-level object pose estimation called TTA-COPE. We design a pose ensemble approach with a self-training loss using pose-aware confidence. Unlike previous unsupervised domain adaptation methods for category-level object pose estimation, our approach processes the test data in a sequential, online manner, and it does not require access to the source domain at runtime. Extensive experimental results demonstrate that the proposed pose ensemble and the self-training loss improve category-level object pose performance during test time under both semi-supervised and unsupervised settings. Project page: https://taeyeop.com/ttacope
翻译:最近,测试时自适应方法作为解决源领域和目标领域差距的实际解决方案越来越受到关注,这种方法不需要在目标数据上标记就可以通过逐步更新模型来实现模型更新。本文提出了一种适用于类别级物体姿态估计的测试时自适应方法,称为TTA-COPE。我们设计了一种使用姿态感知置信度的姿态集成方法和自训练损失函数。与前几种无监督领域适应分类级物体姿态估计方法不同,我们的方法可以在测试时以顺序化和在线方式处理数据,并且不需要在运行时访问源领域。广泛的实验结果表明,所提出的姿态集成和自训练损失函数可以在半监督和无监督情况下,在测试时改善类别级物体姿态性能。项目页面:https://taeyeop.com/ttacope