论文标题
基于块稀疏结构的高光谱图像的光谱脉络
Spectral Unmixing of Hyperspectral Images Based on Block Sparse Structure
论文作者
论文摘要
高光谱图像(HSIS)的光谱不混合(SU)是遥感(RS)的重要领域之一,需要在不同的RS应用中仔细解决。尽管高光谱数据的光谱分辨率很高,但传感器的空间分辨率相对较低,可能导致图像像素内不同纯材料的混合物。在这种情况下,传感器记录的给定像素的光谱可以是属于该像素中独特材料的多个光谱的组合。然后将光谱拆解用作一种技术,以提取混合像素内不同材料的光谱特性,并恢复每个纯光谱签名的光谱,称为Endmember。由于相邻像素之间的频谱相似性,在高光谱图像中存在块 - 比率。在块状信号中,非零样品出现在簇中,并且群集的模式通常不可用作为先验信息。本文介绍了基于块状结构的HSIS的创新光谱方法。使用模式耦合的稀疏贝叶斯学习策略(PCSBL)解决了高光谱的混合问题。为了评估所提出的SU算法的性能,在合成和真实的高光谱数据上都进行了测试,并将定量结果与其他最先进方法的结果进行了比较。所达到的结果表明,所提出的算法比其他竞争方法的优越性具有显着的余量。
Spectral unmixing (SU) of hyperspectral images (HSIs) is one of the important areas in remote sensing (RS) that needs to be carefully addressed in different RS applications. Despite the high spectral resolution of the hyperspectral data, the relatively low spatial resolution of the sensors may lead to mixture of different pure materials within the image pixels. In this case, the spectrum of a given pixel recorded by the sensor can be a combination of multiple spectra each belonging to a unique material in that pixel. Spectral unmixing is then used as a technique to extract the spectral characteristics of the different materials within the mixed pixels and to recover the spectrum of each pure spectral signature, called endmember. Block-sparsity exists in hyperspectral images as a result of spectral similarity between neighboring pixels. In block-sparse signals, the nonzero samples occur in clusters and the pattern of the clusters is often supposed to be unavailable as prior information. This paper presents an innovative spectral unmixing approach for HSIs based on block-sparse structure. Hyperspectral unmixing problem is solved using pattern coupled sparse Bayesian learning strategy (PCSBL). To evaluate the performance of the proposed SU algorithm, it is tested on both synthetic and real hyperspectral data and the quantitative results are compared to those of other state-of-the-art methods in terms of abundance angle distance and mean squared error. The achieved results show the superiority of the proposed algorithm over the other competing methods by a significant margin.