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OBJECT-SHAPE RECOGNITION BY TACTILE IMAGE ANALYSIS USING SUPPORT VECTOR MACHINE

机译:利用支持向量机的触觉图像分析识别物体形状

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摘要

The sense of touch is important to human to understand shape, texture, and hardness of the objects. An object under grip, i.e. object exploration by enclosure, provides a unique pressure distribution on the different regions of palm depending on its shape. This paper utilizes the above experience for recognition of object shapes by tactile image analysis. The high pressure regions (HPRs) are segmented and analyzed for object shape recognition rather than analyzing the entire image. Tactile images are acquired by capacitive tactile sensor while grasping a particular object. Geometrical features are extracted from the chain codes obtained by polygon approximation of the contours of the segmented HPRs. Two-level classification scheme using linear support vector machine (LSVM) is employed to classify the input feature vector in respective object shape classes with an average classification accuracy of 93.46% and computational time of 1.19 s for 12 different object shape classes. Our proposed two-level LSVM reduces the misclassification rates, thus efficiently recognizes various object shapes from the tactile images.
机译:触摸感对于人类了解物体的形状,质地和硬度很重要。处于抓握状态的物体(即通过外壳进行物体探索)根据其形状在手掌的不同区域提供独特的压力分布。本文利用上述经验通过触觉图像分析识别物体形状。对高压区域(HPR)进行分割和分析以识别物体形状,而不是分析整个图像。在抓住特定物体的同时,通过电容式触觉传感器获取触觉图像。从通过分割的HPR轮廓的多边形近似获得的链代码中提取几何特征。采用线性支持向量机(LSVM)的两级分类方案将输入特征向量分类为各个对象形状类别,其中12个不同对象形状类别的平均分类精度为93.46%,计算时间为1.19 s。我们提出的两级LSVM降低了误分类率,从而有效地从触觉图像中识别出各种物体形状。

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