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Object shape recognition from tactile images using regional descriptors

机译:物体形状从使用区域描述符的触觉图像识别

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This paper presents a novel approach of shape recognition from the tactile images by touching the surface of various real life objects. Here four geometric shaped objects (viz. a planar surface, object with one edge, a cubical object i.e. object with two edges and a cylindrical object) are used for shape recognition. The high pressure regions denoting surface edges have been segmented out via multilevel thresholding. These high pressure regions hereby obtained were unique to different object classes. Some regional descriptors have been used to uniquely describe the high pressure regions. These regional descriptors have been employed as the features needed for the classification purpose. Linear Support Vector Machine (LSVM) classifier is used for object shape classification. In noise free environment the classifier gives an average accuracy of 92.6%. Some statistical tests have been performed to prove the efficacy of the classification process. The classifier performance is also tested in noisy environment with different signal-to-noise (SNR) ratios.
机译:本文通过触摸各种真实寿命对象的表面来介绍从触觉图像的形状识别的新方法。这里四个几何形状物体(viz。平面表面,具有一个边缘的物体,一个立方体对象,即具有两个边缘的对象和圆柱形物体)用于形状识别。表示表面边缘的高压区域已经通过多级阈值处理分段。在此获得的这些高压区域是不同的物体类别的独特。一些区域描述符已被用来唯一描述高压区域。这些区域描述符已被聘用为分类目的所需的功能。线性支持向量机(LSVM)分类器用于对象形状分类。在无噪声环境中,分类器的平均精度为92.6%。已经进行了一些统计测试以证明分类过程的功效。分类器性能也在嘈杂的环境中测试,具有不同的信号 - 噪声(SNR)比率。

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