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Data processing method applying principal component analysis and spectral angle mapper for imaging spectroscopic sensors

机译:用于应用主成分分析的数据处理方法和用于成像光谱传感器的光谱角映射器

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A data processing method for hyperspectral images is presented. Each image contains the whole diffuse reflectance spectra of the analyzed material for all the spatial positions along a specific line of vision. This data processing method is composed of two blocks: data compression and classification unit. Data compression is performed by means of Principal Component Analysis (PCA) and the spectral interpretation algorithm for classification is the Spectral Angle Mapper (SAM). This strategy of classification applying PCA and SAM has been successfully tested on the raw material on-line characterization in the tobacco industry. In this application case the desired raw material (tobacco leaves) should be discriminated from other unwanted spurious materials, such as plastic, cardboard, leather, candy paper, etc. Hyperspectral images are recorded by a spectroscopic sensor consisting of a monochromatic camera and a passive Prism-Grating-Prism device. Performance results are compared with a spectral interpretation algorithm based on Artificial Neural Networks (ANN).
机译:呈现了高光谱图像的数据处理方法。每个图像包含分析材料的整个漫反射光谱,用于沿着特定视觉线的所有空间位置。该数据处理方法由两个块:数据压缩和分类单元组成。数据压缩通过主成分分析(PCA)和分类的光谱解释算法是频谱角映射器(SAM)。应用PCA和SAM的分类策略已经成功地测试了烟草业的原材料在线表征。在本申请案例中,应从其他不需要的杂散材料区别地区的诸如塑料,纸板,皮革,糖果纸等所需的原料(烟叶)。高光谱图像由由单色相机和无源组成的光谱传感器记录。棱镜 - 棱镜装置。将性能结果与基于人工神经网络(ANN)的光谱解释算法进行了比较。

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