Detecting and Identifying Tactile Gestures using Deep Autoencoders, Geometric Moments and Gesture Level Features

Dana Hughes, N. Farrow, Halley P. Profita, N. Correll
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引用次数: 26

Abstract

While several sensing modalities and transduction approaches have been developed for tactile sensing in robotic skins, there has been much less work towards extracting features for or identifying high-level gestures performed on the skin. In this paper, we investigate using deep neural networks with hidden Markov models (DNN-HMMs), geometric moments and gesture level features to identify a set of gestures performed on robotic skins. We demonstrate that these features are useful for identifying gestures, and predict a set of gestures from a 14-class dataset with 56% accuracy, and a 7-class dataset with 71% accuracy.
虽然已经开发了几种用于机器人皮肤触觉传感的传感模式和转导方法,但在提取特征或识别在皮肤上执行的高级手势方面的工作要少得多。在本文中,我们研究了使用具有隐马尔可夫模型(dnn - hmm),几何矩和手势水平特征的深度神经网络来识别机器人皮肤上执行的一组手势。我们证明了这些特征对识别手势很有用,并从14类数据集中预测了一组手势,准确率为56%,从7类数据集中预测了一组手势,准确率为71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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