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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Using perceptual relation of regularity and anisotropy in the texture with independent component model for defect detection
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Using perceptual relation of regularity and anisotropy in the texture with independent component model for defect detection

机译:使用具有独立分量模型的纹理中的规则性和各向异性的感官关系进行缺陷检测

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摘要

This paper addresses the raw textile defect detection problem using independent components approach with insights from human vision system. Human vision system is known to have specialized receptive fields that respond to certain type of input signals. Orientation-selective bar cells and grating cells are examples of receptive fields in the primary visual cortex that are selective to periodic- and aperiodic-patterns, respectively. Regularity and anisotropy are two high-level features of texture perception, and we can say that disruption in regularity and/or orientation field of the texture pattern causes structural defects. In our research, we observed that independent components extracted from texture images give bar or grating cell like results depending on the structure of the texture. For those textures having lower regularity and dominant local anisotropy (orientation or directionality), independent components look similar to bar cells whereas textures with high regularity and lower anisotropy have independent components acting like grating cells. Thus, we will expect different bar or grating cell like independent components to respond to defective and defect-free regions. With this motivation, statistical analysis of the structure of the texture by means of independent components and then extraction of the disturbance in the structure can be a promising approach to understand perception of local disorder of texture in human vision system. In this paper, we will show how to detect regions of structural defects in raw textile data that have certain regularity and local orientation characteristics with the application of independent component analysis (ICA), and we will present results on real textile images with detailed discussions. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文利用独立的组件方法,结合人类视觉系统的见解,解决了原始纺织品缺陷检测问题。已知人类视觉系统具有对某些类型的输入信号做出响应的专门的接收场。方向选择性条状细胞和光栅状细胞是初级视觉皮层中感受野的例子,它们分别对周期性和非周期性模式具有选择性。规则性和各向异性是纹理感知的两个高级特征,可以说纹理图案的规则性和/或方向场的破坏会导致结构缺陷。在我们的研究中,我们观察到从纹理图像中提取的独立成分会根据纹理的结构产生类似条形或光栅状的结果。对于那些具有较低规则性和主要局部各向异性(方向性或方向性)的纹理,独立的成分看起来与条形单元相似,而具有高规则性和较低的各向异性的纹理具有像光栅单元一样的独立成分。因此,我们将期望像独立组件一样的不同的条形或光栅单元对有缺陷和无缺陷的区域做出响应。在这种动机下,通过独立的组件对纹理结构进行统计分析,然后提取结构中的扰动可能是一种了解人类视觉系统中纹理局部异常的有前途的方法。在本文中,我们将展示如何通过独立成分分析(ICA)的应用来检测原始纺织品数据中具有一定规律性和局部取向特征的结构缺陷区域,并在真实的纺织品图像上进行详细讨论。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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