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Target Classification Method of Tactile Perception Data with Deep Learning.

Xingxing ZhangShaobo LiJing YangQiang BaiYang WangMingming ShenRuiqiang PuQisong Song
Published in: Entropy (Basel, Switzerland) (2021)
In order to improve the accuracy of manipulator operation, it is necessary to install a tactile sensor on the manipulator to obtain tactile information and accurately classify a target. However, with the increase in the uncertainty and complexity of tactile sensing data characteristics, and the continuous development of tactile sensors, typical machine-learning algorithms often cannot solve the problem of target classification of pure tactile data. Here, we propose a new model by combining a convolutional neural network and a residual network, named ResNet10-v1. We optimized the convolutional kernel, hyperparameters, and loss function of the model, and further improved the accuracy of target classification through the K-means clustering method. We verified the feasibility and effectiveness of the proposed method through a large number of experiments. We expect to further improve the generalization ability of this method and provide an important reference for the research in the field of tactile perception classification.
Keyphrases
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  • convolutional neural network
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  • low cost