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通过触觉图像分析进行基于纹理和可变形性的表面识别。

Texture- and deformability-based surface recognition by tactile image analysis.

作者信息

Khasnobish Anwesha, Pal Monalisa, Tibarewala D N, Konar Amit, Pal Kunal

机构信息

School of Bioscience and Engineering, Jadavpur University, Raja S.C. Mullick Road, Kolkata, West Bengal, 700032, India.

Department of Electronics and Telecommunication Engineering, Jadavpur University, Raja S.C. Mullick Road, Kolkata, West Bengal, 700032, India.

出版信息

Med Biol Eng Comput. 2016 Aug;54(8):1269-83. doi: 10.1007/s11517-016-1464-2. Epub 2016 Mar 23.

Abstract

Deformability and texture are two unique object characteristics which are essential for appropriate surface recognition by tactile exploration. Tactile sensation is required to be incorporated in artificial arms for rehabilitative and other human-computer interface applications to achieve efficient and human-like manoeuvring. To accomplish the same, surface recognition by tactile data analysis is one of the prerequisites. The aim of this work is to develop effective technique for identification of various surfaces based on deformability and texture by analysing tactile images which are obtained during dynamic exploration of the item by artificial arms whose gripper is fitted with tactile sensors. Tactile data have been acquired, while human beings as well as a robot hand fitted with tactile sensors explored the objects. The tactile images are pre-processed, and relevant features are extracted from the tactile images. These features are provided as input to the variants of support vector machine (SVM), linear discriminant analysis and k-nearest neighbour (kNN) for classification. Based on deformability, six household surfaces are recognized from their corresponding tactile images. Moreover, based on texture five surfaces of daily use are classified. The method adopted in the former two cases has also been applied for deformability- and texture-based recognition of four biomembranes, i.e. membranes prepared from biomaterials which can be used for various applications such as drug delivery and implants. Linear SVM performed best for recognizing surface deformability with an accuracy of 83 % in 82.60 ms, whereas kNN classifier recognizes surfaces of daily use having different textures with an accuracy of 89 % in 54.25 ms and SVM with radial basis function kernel recognizes biomembranes with an accuracy of 78 % in 53.35 ms. The classifiers are observed to generalize well on the unseen test datasets with very high performance to achieve efficient material recognition based on its deformability and texture.

摘要

可变形性和质地是两个独特的物体特征,对于通过触觉探索进行适当的表面识别至关重要。为了实现高效且类似人类的操作,在康复和其他人机接口应用的人造手臂中需要融入触觉感知。要做到这一点,通过触觉数据分析进行表面识别是先决条件之一。这项工作的目的是通过分析触觉图像来开发一种有效的技术,基于可变形性和质地识别各种表面,这些触觉图像是在装有触觉传感器的人造手臂动态探索物品的过程中获得的。在人类以及装有触觉传感器的机器人手探索物体时采集了触觉数据。对触觉图像进行预处理,并从触觉图像中提取相关特征。将这些特征作为支持向量机(SVM)、线性判别分析和k近邻(kNN)变体的输入进行分类。基于可变形性,从相应的触觉图像中识别出六种家用表面。此外,基于质地对五种日常使用的表面进行了分类。前两种情况中采用的方法也已应用于基于可变形性和质地对四种生物膜的识别,即由生物材料制备的膜,可用于药物递送和植入物等各种应用。线性SVM在82.60毫秒内以83%的准确率在识别表面可变形性方面表现最佳,而kNN分类器在54.25毫秒内以89%的准确率识别具有不同质地的日常使用表面,具有径向基函数核的SVM在53.35毫秒内以78%的准确率识别生物膜。观察到这些分类器在未见测试数据集上具有很好的泛化能力,具有非常高的性能,以基于其可变形性和质地实现高效的材料识别。

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