物体滑动的自监督学习:基于低成本触觉传感器训练的LSTM模型

Ainur Begalinova, Ross D. King, B. Lennox, R. Batista-Navarro
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引用次数: 4

摘要

本文提出了一种基于低成本触觉传感器收集的时间特征的抓取滑动检测的机器学习技术组合。滑动是在手与物体接触时发生的先前微滑动之后发生的事件。该方法基于顺序分类技术的应用(循环神经网络的一种变体,称为长短期记忆网络或LSTMs),其中触觉传感器的时间序列压力读数被分类为滑动或非滑动事件。我们还提出了一种新的自主标签方法,在标签过程中消除了对人类的需要。最后,本文提出了一种集成非昂贵传感器的自适应可穿戴触觉传感装置的新设计。我们提出的方法在滑动和非滑动事件的分类中取得了很高的准确率,使用Sawyer机器人进行离线分类的准确率超过95%,在线分类的准确率达到89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-supervised learning of object slippage: An LSTM model trained on low-cost tactile sensors
This paper presents a combination of machine learning techniques for slip detection in grasping, based on temporal features collected by low-cost tactile sensors. A slippage is an event that is subsequent to prior micro-slippages that have occurred at hand-object contact. The method is based on the application of a sequential classification technique (a variant of recurrent neural networks known as long short-term memory networks or LSTMs), whereby time-series pressure readings from tactile sensors are classified as either slip or non-slip events. We also propose a novel method for autonomous labelling, removing the need for humans in the labelling process. Lastly, this paper proposes a new design for an adaptable wearable tactile sensing device that integrates non-expensive sensors. Our proposed method achieved high accuracy in the classification of slip and non-slip events, obtaining over 95% in offline classification and 89% in online classification using a Sawyer robot.
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