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Application of statistical modeling of image spatial structures to automated visual inspection of product quality

机译:图像空间结构的统计建模在产品质量自动视觉检查中的应用

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Automated visual inspection (AVI) attracts increasing interest in product quality control both academic and industrial communities, particularly on mass production processes, because product qualities of most types can be characterized with their corresponding surface visual attributes. However, many product images in AVI systems are comprised of stochastically accumulative fragmentations (particles) of local homogeneity, without distinctive foregrounds and backgrounds, which brings great challenges in computer analysis, e.g., rice images, fabric images, and consequently, in the intelligent identification of the product qualities. A method of Weibull distribution (WD)-based statistical modeling of image spatial structures (ISSs) to inspect automatically the product quality is presented. The ISS, obtained with multi-scale and omnidirectional Gaussian derivative filters (OGDFs), was demonstrated to be subject to a representative WD model of integral form based on the theory of sequential fragmentation in advance. The WD-model parameters (WD-MPs) of the ISS, with essential human perceptual significance, were extracted as the visual features for product quality identification. The classification performance of the proposed product quality inspection method, namely, the proposed WD-MP features integrated with an introduced spline regression (SR) classifier in this study, was verified on two case studies in the field of the AVI of product quality, namely, automated rice quality classification, and intelligent fabric quality assessment in the corresponding assembly lines of industrial scale. Experimental results indicate that the proposed WD-MP features can effectively characterize the statistical distribution profiles of ISS of complex grain images, piled with a large number of stochastically accumulative fragmentations. The proposed method provides an effective tool for grain image modeling and analysis and consequently lays a foundation for the intelligent perception of product qualities on assembly lines. (C) 2016 Elsevier Ltd. All rights reserved.
机译:自动化外观检查(AVI)引起了学术界和工业界对产品质量控制的越来越多的关注,特别是在批量生产过程中,因为大多数类型的产品质量都可以通过其相应的表面视觉属性来表征。但是,AVI系统中的许多产品图像都是由局部均一性的随机累积碎片(颗粒)组成,没有明显的前景和背景,这给计算机分析带来了巨大挑战,例如大米图像,织物图像以及因此在智能识别中产品质量。提出了一种基于威布尔分布(WD)的图像空间结构(ISS)统计模型来自动检查产品质量的方法。利用多尺度和全向高斯导数滤波器(OGDFs)获得的国际空间站已被证明可以预先基于顺序分段理论接受具有代表性的整数形式的WD模型。具有基本人类感知意义的ISS的WD模型参数(WD-MPs)被提取为产品质量识别的视觉特征。本产品质量检验方法的分类性能,即本研究中建议的WD-MP功能与引入的样条回归(SR)分类器集成在一起,在产品质量AVI领域的两个案例研究中得到了验证,即,在相应的工业规模装配线上进行大米质量自动分类和智能织物质量评估。实验结果表明,所提出的WD-MP特征可以有效地表征复杂的谷物图像的ISS的统计分布轮廓,该图像堆积有大量的随机累积碎片。所提出的方法为谷物图像的建模和分析提供了有效的工具,从而为在装配线上智能地感知产品质量奠定了基础。 (C)2016 Elsevier Ltd.保留所有权利。

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