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Quality-Related Monitoring and Grading of Granulated Products by Weibull-Distribution Modeling of Visual Images with Semi-Supervised Learning

机译:半监督学习的视觉图像威布尔分布建模对颗粒产品的质量相关监控和分级

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摘要

The topic of online product quality inspection (OPQI) with smart visual sensors is attracting increasing interest in both the academic and industrial communities on account of the natural connection between the visual appearance of products with their underlying qualities. Visual images captured from granulated products (GPs), e.g., cereal products, fabric textiles, are comprised of a large number of independent particles or stochastically stacking locally homogeneous fragments, whose analysis and understanding remains challenging. A method of image statistical modeling-based OPQI for GP quality grading and monitoring by a Weibull distribution(WD) model with a semi-supervised learning classifier is presented. WD-model parameters (WD-MPs) of GP images’ spatial structures, obtained with omnidirectional Gaussian derivative filtering (OGDF), which were demonstrated theoretically to obey a specific WD model of integral form, were extracted as the visual features. Then, a co-training-style semi-supervised classifier algorithm, named COSC-Boosting, was exploited for semi-supervised GP quality grading, by integrating two independent classifiers with complementary nature in the face of scarce labeled samples. Effectiveness of the proposed OPQI method was verified and compared in the field of automated rice quality grading with commonly-used methods and showed superior performance, which lays a foundation for the quality control of GP on assembly lines.
机译:智能视觉传感器的在线产品质量检查(OPQI)主题由于产品的视觉外观与其基本质量之间的自然联系而引起了学术界和工业界的越来越多的关注。从粒状产品(GP)(例如谷物产品,织物纺织品)中捕获的视觉图像由大量独立颗粒组成,或随机堆积局部均质的碎片,其分析和理解仍具有挑战性。提出了一种基于图像统计建模的OPQI方法,该方法通过具有半监督学习分类器的Weibull分布(WD)模型对GP质量进行分级和监控。提取全向高斯导数滤波(OGDF)获得的GP图像空间结构的WD模型参数(WD-MPs)作为视觉特征,这些参数在理论上被证明遵循整数形式的特定WD模型。然后,通过整合两个互补性质的独立分类器面对稀缺的标记样本,开发了一种名为COSC-Boosting的协同训练式半监督分类器算法,用于半监督GP质量分级。在自动稻米质量分级中,与常用方法进行比较,验证了所提出的OPQI方法的有效性,并显示了优越的性能,为流水线GP的质量控制奠定了基础。

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