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Pattern recognition methods for automated detection and quantification: Applications to passive remote sensing and near infrared spectroscopy.

机译:用于自动检测和定量的模式识别方法:在被动遥感和近红外光谱中的应用。

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摘要

Pattern recognition has over past decades become a fast growing area of chemometrics. Accurate, user-friendly, and fast pattern recognition methods are desired to accommodate the increased capacity of automated instruments to obtain large-scale data under complex circumstances. It has found significant applications in diverse fields such as environmental monitoring and biomedical diagnostics. In this dissertation, the capabilities of pattern recognition methods in case studies related to environmental remote sensing and biomedical sensing are investigated.;For remote sensing applications, two types of airborne spectroscopic data, passive Fourier transform infrared (FTIR) and gamma-ray, are subject to analysis in order to develop automated classifiers for either ammonia vapor or the radioisotope cesium-137 in the open-air. Support vector machine (SVM) classification is the primary pattern recognition method used in this work. In order to overcome the limitation of available representative patterns associated with airborne data, and provide sufficient patterns presenting the analyte-active class for use in the training set, a spectral simulation protocol is employed to generate abundant patterns bearing both the signature of the target analyte and the background spectral profile. Signal processing procedures including segment selection and digital filtering are further used to extract the information most relevant to the target analyte out the acquired raw data. Also, to ease the computational demand from the SVM, an alternative pattern recognition method, piecewise linear discriminant analysis (PLDA) is applied to optimize signal processing conditions for final SVM classification. Process control techniques are applied to the SVM score profiles of prediction sets to improve pattern recognition performance by incorporating probabilities associated with every SVM score. Ammonia classifiers developed from this methodology result in classification performance with high sensitivity and selectivity, and the cesium-137 classifiers developed from the same concepts exhibit excellent sensitivity to test data with very low signal strengths. Under the case of ammonia classification, the relationship between the concentration profile of the active patterns in the training set and the limit of detection of the corresponding classifier is investigated. Classifiers built to detect low concentrations of ammonia are developed and tested through this work.;For a glucose sensing application, studies are conducted to provide sound performance diagnostics for an established calibration model for glucose from near infrared spectroscopic data. Six-component aqueous matrixes of glucose in the presence of five other interfering species, all spanning physiological levels, serve as samples to be analyzed. A novel residual modeling protocol is proposed to retrieve the residual glucose concentrations, the concentration not being predicted by the calibration model, from the residual spectra, the portion of the raw spectra not being used by the calibration model. The recovered glucose concentration from the residual modeling can be used as a means, combined with process control techniques, to evaluate the performance of the established calibration model. Several modeling techniques are used for residual modeling, including PLS, support vector regression (SVR), a hybrid method, PLS-aided SVR, and an amplified version of the hybrid, amplified PLS-aided SVR. Through this work, a calibration updating strategy is developed which provides an effective way to monitor the established calibration model.
机译:模式识别在过去几十年中已成为化学计量学的快速增长领域。需要精确,用户友好和快速的模式识别方法,以适应自动化仪器在复杂情况下获得大规模数据所需的更大能力。它已在诸如环境监测和生物医学诊断等各个领域中找到了重要的应用。本文研究了模式识别方法在与环境遥感和生物医学遥感有关的案例研究中的能力。在遥感应用中,机载光谱数据有两种类型,即被动傅立叶变换红外(FTIR)和伽马射线。进行分析以便开发用于露天的氨蒸气或放射性同位素铯137的自动分类器。支持向量机(SVM)分类是这项工作中使用的主要模式识别方法。为了克服与航空数据相关的可用代表性模式的局限性,并提供足够的模式来表示可用于训练集中的分析物活性类别,采用光谱模拟协议来生成带有目标分析物特征的丰富模式和背景光谱轮廓。包括片段选择和数字滤波在内的信号处理程序还用于从采集的原始数据中提取与目标分析物最相关的信息。同样,为了减轻SVM的计算需求,可应用另一种模式识别方法,分段线性判别分析(PLDA)来优化信号处理条件,以进行最终SVM分类。将过程控制技术应用于预测集的SVM分数配置文件,以通过合并与每个SVM分数相关的概率来提高模式识别性能。通过这种方法开发的氨分类器可实现具有高灵敏度和选择性的分类性能,而从相同概念开发的铯137分类器则对信号强度非常低的测试数据表现出出色的灵敏度。在氨分级的情况下,研究了训练集中有效模式的浓度曲线与相应分级器的检出限之间的关系。通过这项工作,开发出了用于检测低浓度氨的分类器,并对其进行了测试。;对于葡萄糖感测应用,进行了研究,以为根据近红外光谱数据建立的葡萄糖校准模型提供声音性能诊断。在五个其他干扰物种(均跨越生理水平)的情况下,葡萄糖的六组分含水基质可作为待分析样品。提出了一种新颖的残留建模协议,以从残留光谱中检索残留葡萄糖浓度,该浓度未被校准模型预测,而原始光谱的一部分未被校准模型使用。从残留模型中回收的葡萄糖浓度可以用作与过程控制技术结合的一种手段,以评估已建立的校准模型的性能。几种建模技术用于残差建模,包括PLS,支持向量回归(SVR),混合方法,PLS辅助SVR,以及混合,放大PLS辅助SVR的放大版本。通过这项工作,开发了一种校准更新策略,该策略提供了一种有效的方法来监视已建立的校准模型。

著录项

  • 作者

    Yu, Hua.;

  • 作者单位

    The University of Iowa.;

  • 授予单位 The University of Iowa.;
  • 学科 Analytical chemistry.;Environmental science.;Remote sensing.;Biomedical engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 274 p.
  • 总页数 274
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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