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Tutorial: Time series hyperspectral image analysis

机译:教程:时间序列高光谱图像分析

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A hyperspectral image is a large dataset in which each pixel corresponds to a spectrum, thus providing high-quality detail of a sample surface. Hyperspectral images are thus characterised by dual information, spectral and spatial, which allows for the acquisition of both qualitative and quantitative information from a sample. A hyperspectral image, commonly known as a "hypercube", comprises two spatial dimensions and one spectral dimension. The data of such a file contain both chemical and physical information. Such files need to be analysed with a computational "chemometric" approach in order to reduce the dimensionality of the data, while retaining the most useful spectral information. Time series hyperspectral imaging data comprise multiple hypercubes, each presenting the sample at a different time point, requiring additional considerations in the data analysis. This paper provides a step-by-step tutorial for time series hyperspectral data analysis, with detailed command line scripts in the Matlab and R computing languages presented in the supplementary data. The example time series data, available for download, are a set of time series hyperspectral images following the setting of a cement-based biomaterial. Starting from spectral pre-processing (image acquisition, background removal, dead pixels and spikes, masking) and pre-treatments, the typical steps encountered in time series hyperspectral image processing are then presented, including unsupervised and supervised chemometric methods. At the end of the tutorial paper, some general guidelines on hyperspectral image processing are proposed.
机译:高光谱图像是一个大型数据集,其中每个像素对应一个光谱,从而提供了样品表面的高质量细节。因此,高光谱图像的特征在于光谱和空间双重信息,从而可以从样品中获取定性和定量信息。高光谱图像,通常称为“超立方体”,包括两个空间尺寸和一个光谱尺寸。这种文件的数据包含化学和物理信息。为了减少数据的维数,同时保留最有用的光谱信息,需要使用计算“化学计量”方法分析此类文件。时间序列高光谱成像数据包含多个超立方体,每个超立方体都在不同的时间点显示样品,因此在数据分析中需要考虑其他因素。本文提供了时间序列高光谱数据分析的分步教程,并在补充数据中提供了Matlab和R计算语言的详细命令行脚本。可供下载的示例时间序列数据是遵循基于水泥的生物材料设置的一组时间序列高光谱图像。从光谱预处理(图像采集,背景去除,坏点和尖峰,遮罩)和预处理开始,然后介绍了时间序列高光谱图像处理中遇到的典型步骤,包括无监督和监督化学计量方法。在本教程的结尾,提出了一些有关高光谱图像处理的一般准则。

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