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Spatial-spectral Blood Cell Classification with Microscopic Hyperspectral Imagery

机译:显微高光谱图像对空间光谱血细胞的分类

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Microscopic hyperspectral images provide a new way for blood cell examination. The hyperspectral imagery can greatly facilitate the classification of different blood cells. In this paper, the microscopic hyperspectral images are acquired by connecting the microscope and the hyperspectral imager, and then tested for blood cell classification. For combined use of the spectral and spatial information provided by hyperspectral images, a spatial-spectral classification method is improved from the classical extreme learning machine (ELM) by integrating spatial context into the image classification task with Markov random field (MRF) model. Comparisons are done among ELM, ELM-MRF, support vector machines(SVM) and SVM-MRF methods. Results show the spatial-spectral classification methods(ELM-MRF, SVM-MRF) perform better than pixel-based methods(ELM, SVM), and the proposed ELM-MRF has higher precision and show more accurate location of cells.
机译:显微高光谱图像为血细胞检查提供了一种新方法。高光谱图像可以极大地促进不同血细胞的分类。本文通过连接显微镜和高光谱成像仪获取显微高光谱图像,然后进行血细胞分类测试。为了结合使用由高光谱图像提供的光谱和空间信息,通过将空间上下文集成到具有马尔可夫随机场(MRF)模型的图像分类任务中,从经典极限学习机(ELM)改进了空间光谱分类方法。在ELM,ELM-MRF,支持向量机(SVM)和SVM-MRF方法之间进行了比较。结果表明,空间光谱分类方法(ELM-MRF,SVM-MRF)的性能优于基于像素的方法(ELM,SVM),并且所提出的ELM-MRF具有更高的精度,并显示了更精确的细胞定位。

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