首页> 外文会议>2012 International Conference on Communications, Devices and Intelligent Systems. >Application of unsupervised end member detection algorithms for spectral unmixing of hyperspectral data for mangrove species discrimination
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Application of unsupervised end member detection algorithms for spectral unmixing of hyperspectral data for mangrove species discrimination

机译:无监督末端成员检测算法在高光谱数据光谱分解中的应用

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The Sunderban Biosphere Reserve of West Bengal, India is an ideal locale where hyperspectral image data may be successfully utilized for accurate mapping of nearly 94 mangrove species that exist there. The present study is the first attempt to use hyperspectral data in the Sunderban eco-geographic province to enable species level discrimination of mangroves. As priori knowledge of mangrove species distribution in most of the densely forested islands of the Sunderbans is not available, this paper applies unsupervised automated target detection algorithms such as N-FINDR and ATGP for detection of end members (mangrove species) from the hyperspectral image data. The pixels comprising of either homogeneous or mixed mangroves species are unmixed using both constrained and unconstrained linear mixing model and the fractional abundance images of the detected species generated. It has been found that the abundance images generated after unconstrained linear unmixing shows more accuracy with use of end members generated by N-FINDR algorithm as compared to that of constrained linear unmixing with ATGP as well as N-FINDR. The sub pixel classified results have led to the identification of species dominant in Henry's Island to be Avicennia Marina, Avicennia Officinalis, Excoecaria Agallocha, Ceriops Decandra, Phoenix Paludosa and Aegialitis. The area also comprises mixed patches of Ceriops-Excoecaria Agallocha as well as Aegialitis-Avicennia Marina var aquitesima in many places.
机译:印度西孟加拉邦的桑德班生物圈保护区是理想的场所,在这里,高光谱图像数据可以成功地用于精确映射那里存在的近94种红树林物种。本研究是在桑德班生态地理省中使用高光谱数据进行红树林物种级区分的首次尝试。由于尚无Sunderbans大部分茂密森林岛中红树林物种分布的先验知识,因此本文将无监督自动目标检测算法(例如N-FINDR和ATGP)用于从高光谱图像数据中检测末端成员(红树林物种) 。使用受约束和不受约束的线性混合模型将包含均匀红树林物种或混合红树林物种的像素进行混合,并生成检测到的物种的分数丰度图像。已经发现,与由ATGP和N-FINDR进行的约束线性解混相比,在使用无约束的线性解混后生成的丰度图像使用N-FINDR算法生成的末端成员显示出更高的准确性。亚像素分类结果导致识别在亨利岛上占优势的物种为Avicennia Marina,Avicennia Officinalis,Excoecaria Agallocha,Ceriops Decandra,Phoenix Paludosa和Aegialitis。该地区在许多地方还包括混合的杂色片-Exececaria Agallocha以及Aegialitis-Avicennia Marina var aquitesima。

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