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Object shape and size recognition from tactile images

机译:通过触觉图像识别物体形状和大小

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摘要

Artificial touch sensing system for various Human Computer Interaction (HCI) applications is required to be capable of recognizing various parameters viz. object shape, size, texture and surface. However, only identifying object-shapes is not sufficient for object recognition. It is necessary to distinguish the object shapes according to their dimensions or sizes. Thus in the present work object shapes as well as their sizes are recognized by processing and analysis of tactile images obtained by grasping different objects. In this study, statistical features are extracted from a number of acquired tactile images for classification in their respective object shape and size classes. Both inter-subject and intra-subject classifications are performed using four different classifiers (k-nearest neighbor (kNN), Naïve Bayes classifier, Linear Discriminant Analysis (LDA) and Ensemble) in one-versus-one (OVO) basis, which resulted in high classification accuracy independent of the type of classifier. The mean classification accuracies for inter-subject and intra-subject shape and size recognition are found to be 93%, 87% and 94% and 88% respectively.
机译:需要用于各种人机交互(HCI)应用的人工触摸感测系统能够识别各种参数。对象的形状,大小,纹理和表面。但是,仅识别物体形状不足以识别物体。必须根据对象的尺寸或大小来区分它们。因此,在当前工作中,通过处理和分析通过抓握不同物体而获得的触觉图像来识别物体的形状及其尺寸。在这项研究中,从许多获取的触觉图像中提取统计特征,以将其分类为各自的对象形状和大小类别。使用四个不同的分类器(k最近邻(kNN),朴素贝叶斯分类器,线性判别分析(LDA)和集合体)在一对一(OVO)的基础上进行主体间和主体内分类与分类器的类型无关地以较高的分类精度。发现对象间和对象内形状和大小识别的平均分类准确度分别为93%,87%,94%和88%。

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