I. Haughton, Edgar Sucar, A. Mouton, Edward Johns, A. Davison
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引用次数: 1

摘要

神经场可以从零开始训练,有效地表示3D场景的形状和外观。研究还表明,它们可以通过与人类标注者的稀疏交互,密集地映射相关属性,如语义。在这项工作中,我们展示了机器人可以通过自己的完全自主的实验交互,密集地注释具有任意离散或连续物理属性的场景,因为它同时使用RGB-D相机扫描和映射场景。各种场景交互是可能的,包括用力传感戳来确定刚度,用单像素光谱测量局部材料类型或通过推动来预测力分布。稀疏的实验交互由熵引导,以实现高效率,桌面场景属性在几分钟内从几十个交互开始密集映射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time Mapping of Physical Scene Properties with an Autonomous Robot Experimenter
Neural fields can be trained from scratch to represent the shape and appearance of 3D scenes efficiently. It has also been shown that they can densely map correlated properties such as semantics, via sparse interactions from a human labeller. In this work, we show that a robot can densely annotate a scene with arbitrary discrete or continuous physical properties via its own fully-autonomous experimental interactions, as it simultaneously scans and maps it with an RGB-D camera. A variety of scene interactions are possible, including poking with force sensing to determine rigidity, measuring local material type with single-pixel spectroscopy or predicting force distributions by pushing. Sparse experimental interactions are guided by entropy to enable high efficiency, with tabletop scene properties densely mapped from scratch in a few minutes from a few tens of interactions.
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