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Hyperspectral image classification using spatial features extracted by fuzzy C-Means and Dirichlet Mixture Model

机译:使用模糊C型型和Dirichlet混合模型提取的空间特征的高光谱图像分类

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摘要

The spectral content of the small number of training data may not be enough for the classification of high-dimensional hyperspectral images. For this reason, spatial information is also exploited next to the spectral information. In this study, it is intended to classify hyperspectral images using spatial features extracted by fuzzy C-means (FCM) and Dirichlet Mixture Model (DMM). The contribution of the cascaded use of proposed methods are presented in the results section by tables.
机译:少量训练数据的频谱内容可能不足以用于分类高维光谱图像。因此,还在光谱信息旁边利用空间信息。在本研究中,使用由模糊C-MATION(FCM)和Dirichlet混合物模型(DMM)提取的空间特征来分类高光谱图像。级联使用所提出的方法的贡献在结果部分中呈现在表中。

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