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Combining Vision and Tactile Data for Cable Grasping

机译:相结合掌握掌握的视觉和触觉数据

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摘要

In this paper, the problem of properly combining vision and tactile data to locate a deformable linear object, such as a cable, and grasp it according to a required position and orientation of the cable is considered. Tactile sensors suitably developed for this task are adopted in the experiments together with a vision algorithm based on deep learning for the detection of the cable shape from a 2D camera image. The vision system is initially adopted to locate the cable in the scene and execute the grasp, then the tactile sensor is used to estimate the cable shape and position after grasping. The capability of the systems of performing cable regrasp by correcting the grasp pose thanks to the tactile data acquired during the first grasp is considered to deal with the cases in which the vision system can’t be used because of occlusions. Experimental trials show the capability of improving significantly the quality of the grasp thanks to tactile-based regrasping. Finally, the fusion between the shape estimation provided by the vision system and the one provided by the tactile sensor is also presented.
机译:在本文中,考虑了适当地结合视觉和触觉数据来定位可变形线性对象的问题,例如电缆,并根据电缆的所需位置抓住其。在实验中采用了适用于该任务的触觉传感器以及基于深度学习的视觉算法,用于从2D摄像头图像检测电缆形状的深度学习。最初采用视觉系统来定位在场景中的电缆并执行掌握,然后触觉传感器用于估计抓握后的电缆形状和位置。通过校正掌握姿势来执行电缆再次进行的系统的能力被认为是考虑处理由于闭塞而不能使用视觉系统的情况。实验试验表明,由于基于触觉的重生,展示了提高掌握质量的能力。最后,还提出了由视觉系统提供的形状估计与由触觉传感器提供的形状估计之间的融合。

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