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Typical sequence classification method in hyperspectral images with reduced bands

机译:带减少的高光谱图像中的典型序列分类方法

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This work presents a new method for hyperspectral spectra classification based on the Typical Sequence (TS) derived from the Asymptotic Equipartition Theorem and Information Theory. Each Endmember (EM) of a scene is represented by a Hidden Markov Model (HMM) and a spectrum is classified in a given class if it can be considered a TS generated by the HMM associated with the EM related to the class. The Discrete Wavelet Transform (DWT) is used in the orthogonal decomposition of the original spectrum and the HMM parameters are estimated using this orthogonal decomposition. The proposed method is tested with AVIRIS spectra of a scene with 13 EM and the classification results show that 32 spectral bands can be used instead of the original 209 bands, without significant loss in the classification process.
机译:这项工作提出了一种基于渐进等分定理和信息论的典型序列(TS)的高光谱光谱分类的新方法。场景的每个末端成员(EM)均由隐马尔可夫模型(HMM)表示,并且如果可以将频谱分类为给定类别,则可以认为该频谱是由与该类别相关的EM关联的HMM生成的TS。离散小波变换(DWT)用于原始频谱的正交分解,并且使用此正交分解来估计HMM参数。将该方法在13 EM场景下的AVIRIS光谱上进行了测试,分类结果表明可以使用32个光谱带代替原来的209个光谱带,而不会明显损失分类过程。

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