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Controlled spectral unmixing using extended Support Vector Machines

机译:使用扩展支持向量机控制光谱解密

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This paper presents an improved spectral unmixing framework for remote sensing data interpretation. Instead of unmixing every pixel in an image into a fixed set of endmembers, approaches of adaptive subsets of endmember selection for individual pixels are presented which can improve the performance of spectral unmixing. An integrated hard and soft classification map is then generated by applying the mixture analysis based on extended Support Vector Machines. The proposed treatment is effective and easy to implement. Unmixing is more reliable with the controlled mixture model. It can cope with the endmembers' spectral variation as a result of system noise encountered during data collection from the space. Experiments were conducted with Landsat ETM data and satisfactory results were achieved.
机译:本文介绍了一种改进的谱解密框架,用于遥感数据解释。呈现出于固定的终端组中的图像中的每个像素,而不是将每个像素解密,而是呈现针对各个像素的终点选择的自适应子集的方法,其可以提高光谱解密的性能。然后通过基于延伸的支撑载体机器应用混合物分析来产生集成的硬和软分类图。拟议的治疗是有效且易于实施的。无控制的混合模型更可靠,更可靠。由于在空间中的数据收集期间遇到的系统噪声,它可以应对endmembers的光谱变化。通过Landsat ETM数据进行实验,实现了令人满意的结果。

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