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Support Vector Machines in hyperspectral imaging spectroscopy with application to material identification

机译:支持向量机在高光谱成像光谱学中的应用

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A processing methodology based on Support Vector Machines is presented in this paper for the classification of hyperspectral spectroscopic images. The accurate classification of the images is used to perform on-line material identification in industrial environments. Each hyperspectral image consists of the diffuse reflectance of the material under study along all the points of a line of vision. These images are measured through the employment of two imaging spectrographs operating at Vis-NIR, from 400 to 1000 nm, and NIR, from 1000 to 2400 nm, ranges of the spectrum, respectively. The aim of this work is to demonstrate the robustness of Support Vector Machines to recognise certain spectral features of the target. Furthermore, research has been made to find the adequate SVM configuration for this hyperspectral application. In this way, anomaly detection and material identification can be efficiently performed. A classifier with a combination of a Gaussian Kernel and a non linear Principal Component Analysis, namely k-PCA is concluded as the best option in this particular case. Finally, experimental tests have been carried out with materials typical of the tobacco industry (tobacco leaves mixed with unwanted spurious materials, such as leathers, plastics, etc.) to demonstrate the suitability of the proposed technique.
机译:提出了一种基于支持向量机的高光谱光谱图像分类方法。图像的准确分类用于在工业环境中执行在线材料识别。每个高光谱图像都包括研究材料沿一条视线的所有点的漫反射率。这些图像是通过分别使用两个在400-1000 nm的Vis-NIR和1000- 2400 nm的NIR光谱范围的成像光谱仪测量的。这项工作的目的是证明支持向量机能够识别目标的某些光谱特征的鲁棒性。此外,已经进行了研究以找到用于该高光谱应用的适当的SVM配置。这样,可以有效地执行异常检测和材料识别。在这种特殊情况下,将结合高斯核和非线性主成分分析的分类器即k-PCA归为最佳选择。最后,已经对烟草行业的典型材料(烟叶与不想要的伪造材料(例如皮革,塑料等)混合)进行了实验测试,以证明所提出技术的适用性。

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