首页> 外文会议>International Conference on Electrical Engineering - Boumerdes >Combination of spectral unmixing algorithms for the fusion of the hyperspectral and multispectral data with unknown spectral response function
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Combination of spectral unmixing algorithms for the fusion of the hyperspectral and multispectral data with unknown spectral response function

机译:具有未知光谱响应函数的超光谱和多光谱数据融合的光谱解密算法的组合

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In this paper Least Square-Non Negative Matrix Factorization Spectral Unmixing Combination (LS-NNMF-SUC) is presented for the fusion of hyperspectral (HS) and multispectral (MS) data. The observed HS and MS images are respectively the spatial and the spectral degradations according to the sensor characteristics of the High spatial-resolution HS (HHS) image, which is reconstructed based on the high spectral information of Low spatial resolution HS (LHS) image represented by endmembers and high spatial information of High spatial-resolution MS (HMS) image represented by abundances. In this work, the proposed algorithm deals with practical remote sensing situation, where the spectral relationship between the observed HMS image and the estimated HHS image is unknown. As a result, a Spectral Unmixing Combination (SUC) diagram based on Least square (LS) and Non-negative Matrix Factorization (NNMF) Spectral Unmixing is developed, in which the one loop NNMF and LS Spectral Unmixing is performed on the MS and HS images sequentially. The spatial spread transform matrix of the sensor observation model is used to produce the matched abundances of the LHS image, in order to unmix the later. Simulation results performed on HYDICE and AVIRIS data demonstrate the efficiency of the proposed fusion algorithm.
机译:在本文中,提出了最小二乘 - 非负矩阵分解光谱解密组合(LS-NNMF-SUC)用于高光谱(HS)和多光谱(MS)数据的融合。观察到的HS和MS图像分别是根据高空间分辨率HS(HHS)图像的传感器特性的空间和光谱劣化,其基于所示的低空间分辨率HS(LHS)图像的高光谱信息来重建通过对丰富表示的高空间分辨率MS(HMS)图像的endmembers和高空间信息。在这项工作中,所提出的算法涉及实际遥感情况,其中观察到的HMS图像与估计的HHS图像之间的光谱关系是未知的。结果,开发了一种基于最小二乘(LS)和非负矩阵分子(NNMF)光谱解密的光谱解密组合(SUC)图,其中在MS和HS上执行一个环路NNMF和LS谱解密图像顺序图像。传感器观察模型的空间扩展变换矩阵用于产生LHS图像的匹配丰度,以便稍后解锁。对水母和Aviris数据进行的仿真结果证明了所提出的融合算法的效率。

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