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A robust subspace method for semiblind dictionary-aided hyperspectral unmixing

机译:一个鲁棒的半卷发词典 - 辅助高光谱解密的子空间方法

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Recent development in semiblind dictionary-aided hyperspectral unmixing (HU) shows that a classical method in sensor array processing, namely, multiple signal classification (MUSIC), provides an effective way for endmember identification. However, MUSIC (and in fact, other dictionary-based sparse regression algorithms) assumes that there are no mismatches between the true endmember signatures and the dictionary spectral signatures, which may be violated in practice owing to reasons such as endmember variability and calibration errors. This paper presents a robust MUSIC method, wherein spectral signature mismatches are incorporated in the original MUSIC formulation to make the resulting algorithm robust. A computationally simple method is derived for the implementation of robust MUSIC. Simulation results show that robust MUSIC provides improved robustness against spectral signature mismatches than the original MUSIC.
机译:最近的半卷发词典 - 辅助极象解密(HU)表明,传感器阵列处理中的经典方法,即多个信号分类(音乐),为终点识别提供了有效的方法。然而,音乐(实际上,基于其他基于字典的稀疏回归算法)假设真正的终结签名与词典光谱签名之间没有不匹配,而字典频谱签名之间可能会在实际情况下违反,因为诸如终结和校准误差等原因。本文呈现了一种坚固的音乐方法,其中频谱特征不匹配在原始音乐配方中结合到原始的音乐制剂中,以使所得算法的鲁棒稳健。导出计算最简单的方法以实现强大的音乐。仿真结果表明,强大的音乐可以针对比原始音乐的光谱特征不匹配提供改进的鲁棒性。

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