Active Vision for Extraction of Physically Plausible Support Relations

Markus Grotz, D. Sippel, T. Asfour
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引用次数: 8

Abstract

Robots manipulating objects in cluttered scenes require a semantic scene understanding, which describes objects and their relations. Knowledge about physically plausible support relations among objects in such scenes is key for action execution. Due to occlusions, however, support relations often cannot be reliably inferred from a single view only. In this work, we present an active vision system that mitigates occlusion, and explores the scene for object support relations. We extend our previous work in which physically plausible support relations are extracted based on geometric primitives. The active vision system generates view candidates based on existing support relations among the objects, and selects the next best view. We evaluate our approach in simulation, as well as on the humanoid robot ARMAR-6, and show that the active vision system improves the semantic scene model by extracting physically plausible support relations from multiple views.
基于主动视觉的物理似是而非的支持关系提取
机器人在混乱的场景中操纵物体需要语义场景理解,即描述物体及其关系。在这样的场景中,关于物体之间物理上合理的支持关系的知识是行动执行的关键。然而,由于遮挡,支持关系通常不能仅从单个视图可靠地推断出来。在这项工作中,我们提出了一种主动视觉系统,可以减轻遮挡,并探索场景中的物体支持关系。我们扩展了以前的工作,其中物理上合理的支持关系是基于几何原语提取的。主动视觉系统根据物体之间现有的支持关系生成候选视图,并选择下一个最佳视图。我们在仿真和仿人机器人ARMAR-6上评估了我们的方法,并表明主动视觉系统通过从多个视图中提取物理上合理的支持关系来改进语义场景模型。
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