看、听和感觉:机器人操作的智能感官融合

Hao Li, Yizhi Zhang, Junzhe Zhu, Shaoxiong Wang, Michelle A. Lee, Huazhe Xu, E. Adelson, Li Fei-Fei, Ruohan Gao, Jiajun Wu
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引用次数: 12

摘要

人类在日常活动中使用所有的感官来完成不同的任务。相比之下,现有的机器人操作工作主要依赖于一种或偶尔两种模式,如视觉和触觉。在这项工作中,我们系统地研究了视觉、听觉和触觉感知如何共同帮助机器人解决复杂的操作任务。我们建立了一个机器人系统,它可以用摄像头看,用接触式麦克风听,用基于视觉的触觉传感器感觉,这三种感觉模式都融合在一个自我关注模型中。两个具有挑战性的任务,密集包装和浇注的结果,证明了机器人操作的多感官感知的必要性和力量:视觉显示机器人的全局状态,但往往会受到遮挡,音频提供关键时刻的即时反馈,甚至是不可见的,触摸提供精确的局部几何形状的决策。利用这三种模式,我们的机器人系统明显优于之前的方法。
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See, Hear, and Feel: Smart Sensory Fusion for Robotic Manipulation
Humans use all of their senses to accomplish different tasks in everyday activities. In contrast, existing work on robotic manipulation mostly relies on one, or occasionally two modalities, such as vision and touch. In this work, we systematically study how visual, auditory, and tactile perception can jointly help robots to solve complex manipulation tasks. We build a robot system that can see with a camera, hear with a contact microphone, and feel with a vision-based tactile sensor, with all three sensory modalities fused with a self-attention model. Results on two challenging tasks, dense packing and pouring, demonstrate the necessity and power of multisensory perception for robotic manipulation: vision displays the global status of the robot but can often suffer from occlusion, audio provides immediate feedback of key moments that are even invisible, and touch offers precise local geometry for decision making. Leveraging all three modalities, our robotic system significantly outperforms prior methods.
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