Experimental study on model- vs. learning-based slip detection

L. Rosset, Monika Florek-Jasinska, M. Suppa, M. Roa
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引用次数: 4

Abstract

Vision and proprioception are traditional sources of information for robotic grasping, but they are insufficient to achieve a stable grasp without slippage or without applying an excessive force on the object. Tactile sensors can aid in this problem by providing spatial and temporal data on the contact between fingertips and object. In this work, tactile fingertip sensors are used to detect slippage through two separate methods: the first, using principles inspired by human tactile sensing, and the second, by using a convolutional neural network trained with suitably labeled test samples. To perform a fair comparison of the methods, two evaluations are performed using a test bench and a pick-and-place robotic application. Results show promising use of the model-based method to avoid translational slippage, as it was able to consistently keep objects from slipping without overloading the grasp. Limitations of both model- and learning-based approaches are identified and discussed.
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基于模型与基于学习的滑动检测的实验研究
视觉和本体感觉是机器人抓取的传统信息来源,但它们不足以实现无滑移或不对物体施加过大力的稳定抓取。触觉传感器可以通过提供指尖与物体接触的空间和时间数据来解决这个问题。在这项工作中,触觉指尖传感器通过两种不同的方法来检测滑动:第一种方法,使用受人类触觉传感启发的原理,第二种方法,使用经过适当标记的测试样本训练的卷积神经网络。为了对这些方法进行公平的比较,使用试验台和拾取机器人应用程序进行了两次评估。结果显示,基于模型的方法有希望避免平移滑动,因为它能够始终防止物体滑动而不会使抓握过载。识别并讨论了基于模型和基于学习的方法的局限性。
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