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Dynamic Tactile Exploration for Texture Classification using a Miniaturized Multi-modal Tactile Sensor and Machine Learning

机译:用小型化多模态触觉传感器和机器学习纹理分类动态触觉探索

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The findings of this paper enhance the knowledge of machine learning in tactile texture recognition. Synthetic perception of textures was achieved using a recently developed miniaturized multi-modal tactile sensor. Thirteen commonly used textures were dynamically explored and classified using supervised learning classifiers. The best result was achieved by the Extra Trees classifier with an average accuracy score of 95%. Other classifiers also had high-performance results with an average accuracy score of 92% (Random Forest), 91% (Support-Vector Machines), and 88% (Multilayer Perceptron). Among pressure, acceleration and magnetic flux, the sensor’s angular velocity proved to be the most efficient feature to classify textures. The results also showed a correct classification between two textures that were originated from the same anisotropic material. This indicated that the exploration in different directions produced distinctive outputs and, therefore, the exploration in two dimensions have to be analyzed in future works.
机译:本文的研究结果增强机器学习的触觉纹理识别知识。使用最近开发的小型化的多模式触觉传感器达到纹理的综合感知。十三常用的纹理进行动态探索和利用监督学习分类分类。最好的结果是通过额外的树木分类平均准确度得分的95%来实现的。其他分类也有高性能的结果,平均准确度得分的92%(随机森林),91%(支持向量机)和88%(多层感知器)。间压力,加速度和磁通量,传感器的角速度被证明是最有效的特征来分类纹理。研究结果还表明了源自同一各向异性材料两个纹理之间的正确分类。这表明,在不同方向上产生的勘探独特输出的,因此,在两个维度上的探索具有在未来的工作进行分析。

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