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Automated extraction of dominant endmembers from hyperspectral image using SUnSAL and HySime

机译:使用日光和Hysime自动提取高光谱图像的主导终点

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摘要

Linear spectral unmixing (LSU) is widely used technique, in the field of remote sensing (RS), for the accurate estimation of number of endmembers, their spectral signatures and fractional abundances. Large data size, poor spatial resolution, not availability of pure endmember signatures in dataset, mixing of materials at various scales and variability in spectral signature makes linear spectral unmixing as a challenging and inverse-ill posed task. Mainly there are three basic approaches to manage the linear spectral unmixing problem: geometrical, statistical and sparse regression. First two approaches are kind of blind source separation (BSS). Third approach assumes the availability of some standard publicly available spectral libraries, which contains signatures of many materials measured on the earth surface using advance spectra radiometer. The problem of linear spectral unmixing, in semi supervised manner, is simplified to finding the optimal subset of spectral signatures from the library known in advance. In this paper, the concept of soft thresholding is incorporated along with the sparse regression for automatic extraction of endmember signatures and their fractional abundances. Our simulation results conducted for both standard publicly available synthetic fractal dataset and real hyperspectral dataset, like cuprite image, shows procedural improvement in spectral unmixing.
机译:线性光谱解密(LSU)是广泛使用的技术,在遥感(RS)领域,用于准确估计终端数量,它们的光谱签名和分数丰富。大数据尺寸,空间分辨率不佳,无法使用数据集中的纯粹终端会议签名,在各种尺度和光谱签名中的可变异的材料混合使线性光谱解密成为一个具有挑战性和反向不良的任务。主要有三种基本方法来管理线性谱解密问题:几何,统计和稀疏回归。前两种方法是盲源分离(BSS)。第三种方法假设某些标准公开可用光谱库的可用性,其中包含使用预先光谱辐射计在地面上测量的许多材料的签名。简化了以半导体监督方式,以半导体监督方式的线性光谱解密的问题被简化以找到预先已知的库的光谱签名的最佳子集。在本文中,软阈值化的概念与稀疏的回归合并,以自动提取终点签名及其分数丰富。我们的仿真结果对于标准可公开的合成分形数据集和实际高光谱数据集进行,如铜矿图像,显示了光谱解密的过程改进。

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