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Online Social Touch Pattern Recognition with Multi-modal-sensing Modular Tactile Interface

机译:多模式感应模块化触觉界面的在线社交接触模式识别

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The capability of recognizing various social touch patterns is necessary for robots functioning for touch-based social interaction, which is effective in many robot applications. Literature has focused on the novelty of the recognition system or improvements in classification accuracy based on publicly available datasets. In this paper, we propose an integrated framework of implementing social touch recognition system for various robots, which consists of three complementary principles: 1) multi-modal tactile sensing, 2) a modular design, and 3) a social touch pattern classifier capable of learning temporal features. The approach is evaluated by an implemented Multi-modal-sensing Modular Tactile Interface prototype, while for the classifiers, three learning methods-HMM, LSTM, and 3D-CNN-have been tested. The trained classifiers, which can run online in robot's embedded system, predict 18 classes of social touch pattern. Results of the online validation test offer that all three methods are promising with the best accuracy of 88.86%. Especially, the stable performance of 3D-CNN indicates that learning `spatiotemporal' features from tactile data would be more effective. Through this validation process, we have confirmed that our framework can be easily adopted and secures robust performance for social touch pattern recognition.
机译:识别各种社交触摸模式的能力对于机器人进行基于触摸的社交交互功能是必需的,这在许多机器人应用中都很有效。文献集中在识别系统的新颖性或基于公开可用数据集的分类准确性的提高上。在本文中,我们提出了一个用于为各种机器人实施社交触摸识别系统的集成框架,该框架包含三个互补原则:1)多模式触觉传感,2)模块化设计和3)具有以下功能的社交触摸模式分类器:学习时间特征。该方法由一个已实现的多模式传感模块化触觉接口原型进行评估,而对于分类器,已经测试了三种学习方法-HMM,LSTM和3D-CNN。经过训练的分类器可以在机器人的嵌入式系统中在线运行,可以预测18种社交接触模式。在线验证测试的结果表明,这三种方法均有望达到88.86%的最佳准确性。特别是3D-CNN的稳定性能表明,从触觉数据中学习“时空”特征会更有效。通过此验证过程,我们已经确认我们的框架可以轻松采用,并确保社交触摸模式识别的强大性能。

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