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Perceptual Surface Roughness Classification of 3D Textures Using Support Vector Machines

机译:使用支持向量机器的3D纹理的感知表面粗糙度分类

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Perceptual surface roughness classification describes how a surface's texture feels haptically in terms of perceptual categories such as smooth, rough, bumpy, etc. Computer vision and pattern recognition algorithms which estimate a surface's perceptual roughness have a wide range of application areas including robotics, assistive devices, telesurgery and teleperception. In this paper, we propose a novel approach to perceptual surface roughness classification that, unlike previous approaches, is designed to handle multiple roughness categories within the same image. The steps of our approach include (1) texton extraction and classification using a multi-class, non-linear Support Vector Machine; (2) segmentation using the Iterated Conditional Modes algorithm; and (3) overall perceptual roughness classification using a Nearest Neighbor classifier. The proposed approach is evaluated using visio-haptic subjective measures of roughness on images of the 3D texture of real world objects.
机译:感知表面粗糙度分类描述了表面的纹理在感知类别中如何感知类别,如平滑,粗糙,颠簸等。计算机视觉和模式识别算法,估计表面感知粗糙度具有广泛的应用领域,包括机器人,辅助设备,Telesurgery和传递。在本文中,我们提出了一种新的对感知表面粗糙度分类的方法,即与先前的方法不同,旨在处理同一图像中的多个粗糙度类别。我们的方法的步骤包括(1)使用多级非线性支持向量机的Texton提取和分类; (2)使用迭代条件模式算法进行分割; (3)使用最近邻分类器的总体感知粗糙度分类。在现实世界对象的3D纹理的图像上使用Visio-触觉主观测量评估所提出的方法。

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