Sim2real Transfer Learning for Point Cloud Segmentation: An Industrial Application Case on Autonomous Disassembly

Chengzhi Wu, Xuelei Bi, Julius Pfrommer, Alexander Cebulla, Simon Mangold, J. Beyerer
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引用次数: 1

Abstract

On robotics computer vision tasks, generating and annotating large amounts of data from real-world for the use of deep learning-based approaches is often difficult or even impossible. A common strategy for solving this problem is to apply simulation-to-reality (sim2real) approaches with the help of simulated scenes. While the majority of current robotics vision sim2real work focuses on image data, we present an industrial application case that uses sim2real transfer learning for point cloud data. We provide insights on how to generate and process synthetic point cloud data in order to achieve better performance when the learned model is transferred to real-world data. The issue of imbalanced learning is investigated using multiple strategies. A novel patch-based attention network is proposed additionally to tackle this problem.
基于Sim2real迁移学习的点云分割:一个自主拆卸的工业应用案例
在机器人计算机视觉任务中,为使用基于深度学习的方法从现实世界中生成和注释大量数据通常是困难的,甚至是不可能的。解决这个问题的一个常见策略是在模拟场景的帮助下应用模拟到现实(sim2real)方法。虽然目前大多数机器人视觉sim2real工作都集中在图像数据上,但我们提出了一个将sim2real迁移学习用于点云数据的工业应用案例。我们提供了关于如何生成和处理合成点云数据的见解,以便在将学习的模型转移到实际数据时获得更好的性能。运用多种策略研究了不平衡学习问题。为了解决这一问题,本文还提出了一种基于补丁的注意力网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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