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Independent component analysis in information extraction from visibleear-infrared hyperspectral imaging data of cucumber leaves

机译:黄瓜叶片可见/近红外高光谱成像数据信息提取中的独立成分分析

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摘要

Hyperspectral imaging at visible and short near infrared (VIS/SNIR) region has been used to estimate the pigment content of leaves. A complicating feature of measurements with any hyperspectral imaging methodology is the large amount of information generated during the measurement process. In this paper we discuss the identification of the desirable information using independent component analysis (ICA). After hyperspectral image acquisition and pre-processing, the average spectra obtained from the region of interest (ROI) in cucumber leaves were used for model development. Additionally a multi-linear regression model was developed for the prediction of cucumber leaf chlorophyll content. When compared with normal principal component analysis (PCA), the ICA multi-linear regression model provided improved estimates. When the calibration models were applied to an independent validation set, chlorophyll content was reasonably well predicted with a high correlation (r~(2)velence0.774). Depending on the sample, the technique enabled the identification and characterization of the relative content of various chlorophyll types that were distributed within the cucumber leaves. Typically low levels of chlorophyll at leaf margins and higher levels along main vein regions were identified. Our results indicate that hyperspectral imaging exhibits considerable promise for predicting pigments within cucumber leaves and furthermore can be applied non-destructively and in situ to living plant samples.
机译:可见光和短近红外(VIS / SNIR)区域的高光谱成像已用于估计叶片的色素含量。使用任何高光谱成像方法进行测量的一个复杂功能是在测量过程中生成大量信息。在本文中,我们讨论了使用独立成分分析(ICA)识别所需信息的方法。经过高光谱图像采集和预处理后,将从黄瓜叶片中的感兴趣区域(ROI)获得的平均光谱用于模型开发。另外,开发了用于预测黄瓜叶中叶绿素含量的多线性回归模型。与正常主成分分析(PCA)相比,ICA多线性回归模型提供了改进的估计。当将校准模型应用于独立的验证集时,可以合理地预测叶绿素含量,并具有高度相关性(r〜(2)velence0.774)。根据样品的不同,该技术可以鉴定和表征黄瓜叶中分布的各种叶绿素类型的相对含量。通常确定叶边缘的叶绿素水平较低,而沿主脉区域的叶绿素水平较高。我们的结果表明,高光谱成像在预测黄瓜叶片中的色素方面显示出可观的前景,而且可以无损地原位应用于植物样品。

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