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Multivariate image analysis and regression for industrial process monitoring and product quality control.

机译:用于工业过程监控和产品质量控制的多元图像分析和回归。

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On-line Multivariate Image Analysis (MIA) and Multivariate Image Regression (MR) methods are developed for purposes of on-line monitoring and feedback control of industrial processes that are equipped with vision systems. The thesis progresses via three main investigative studies through applications of the proposed methods in the steel manufacturing and forest products industries. These studies are concerned with (i) vision based automatic grading of softwood lumber; (ii) empirical modeling of pulp and paper characteristics using multi-spectral imaging sensors; and (iii) texture based classification of steel surface samples with image texture analysis.; The first industrial application study addresses the problem of automatic quality grading (classification) of sawn softwood lumber based on visually identifying the severity and distribution of common defects. An extended MIA approach for on-line monitoring of true color (RGB) image representations of lumber boards is proposed, which provides both qualitative and quantitative measures of lumber defects. The proposed approach involves developing a robust MIA model on typical defects commonly found in lumber. These defects are then monitored using the MIA model on lumber boards being imaged by an on-line RGB imaging sensor. The Near-Infrared (NIR) wavelength region (900 nm–1700 nm) of the electromagnetic spectrum is also investigated for lumber defect analysis using MIA of multi-spectral NIR images. Advantages and shortcomings of using NIR imaging spectroscopy versus RGB cameras for lumber grading are highlighted.; The second industrial application involves empirical model based prediction of the properties of finished dry pulp sheets and the classification of paper samples having different compositions. In the pulp study a novel MIR technique extracts relevant feature information from multi-spectral images of the samples acquired through NIR imaging spectroscopy, and uses Partial Least Squares (PLS) regression to relate the extracted NIR feature space to the corresponding (non-image) quality data measured via laboratory analysis. The proposed NUR scheme is successfully used to monitor pulp quality variations in an at-line mode on an industrial pulp process during several grade changes. (Abstract shortened by UMI.)
机译:在线多元图像分析(MIA)和多元图像回归(MR)方法的开发是为了对装有视觉系统的工业过程进行在线监控和反馈控制。本文通过三项主要的调查研究,将所提出的方法应用于钢铁制造和林产品行业进行了研究。这些研究与(i)基于视觉的软木板材自动分级有关; (ii)使用多光谱成像传感器对纸浆和纸张特性进行经验建模; (iii)通过图像纹理分析对钢材表面样品进行基于纹理的分类;首次工业应用研究基于视觉识别常见缺陷的严重程度和分布,解决了锯软木木材的自动质量分级(分类)问题。提出了一种扩展的MIA方法,用于在线监测木板的真彩色(RGB)图像表示,它提供了对木材缺陷的定性和定量测量。提议的方法涉及针对木材中常见的典型缺陷开发健壮的MIA模型。然后使用MIA模型在由在线RGB成像传感器成像的木板上监控这些缺陷。还使用多光谱NIR图像的MIA研究了电磁光谱的近红外(NIR)波长区域(900 nm-1700 nm),用于木材缺陷分析。重点介绍了使用NIR成像光谱技术与RGB相机进行木材分级的优缺点。第二工业应用涉及基于经验模型的成品干纸浆片的性能预测以及具有不同组成的纸样品的分类。在纸浆研究中,一种新颖的MIR技术从通过NIR成像光谱获得的样品的多光谱图像中提取相关特征信息,并使用偏最小二乘(PLS)回归将提取的NIR特征空间与相应的(非图像)相关联通过实验室分析测得的质量数据。所提出的NUR方案已成功用于在工业纸浆工艺中以在线模式在线监测纸浆质量变化的几个等级。 (摘要由UMI缩短。)

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