用于合成遥感高光谱图像混合光谱分析的空间和光谱预处理

Fatemeh Kowkabi, H. Ghassemian, A. Keshavarz
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引用次数: 0

摘要

由于高光谱传感器的空间分辨率较低,端元在像素级的丰度呈线性组合。通过将这些混合像素分解成一组端元及其丰度分数来描述光谱解混问题。大多数端元提取技术都是基于图像的光谱特征(如OSP)来设计的。在考虑光谱信息的同时,还隐含了考虑图像像素空间内容的SSPP。在基于谱的端元提取算法之前,我们提出了一个自治模块,通过使用HYDRA工具和USGS库创建具有不同信噪比值的新合成图像,以OSP和SSPP+OSP对我们的方法进行评估,以获得更优的RMSE和基于ad的误差性能。实验结果表明,该方法能更有效地解混数据。
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Spatial and spectral preprocessor for spectral mixture analysis of synthetic remotely sensed hyperspectral image
Linear combination of endmembers according to their abundance fractions at pixel level is as the result of low spatial resolution of hyperspectral sensors. Spectral unmixing problem is described by decomposing these medley pixels into a set of endmembers and their abundance fractions. Most of endmember extraction techniques are designed on the basis of spectral feature of images such as OSP. Also SSPP is implied which considers spatial content of image pixels besides spectral information. We propose a self-governing module prior the spectral based endmember extraction algorithms to achieve superior performance of RMSE and SAD-based errors by creating a new synthetic image using HYDRA tool and USGS library with various values of SNR in order to evaluate our method with OSP and SSPP+OSP. Experimental results in comparison with the mentioned methods show that the proposed method can unmix data more effectively.
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