光子学报, 2011, 40 (6): 835, 网络出版: 2011-06-24
小波包分解支持下的高光谱混合像元盲分解
Blind Unmixing of Hyperspectral Mixed Pixels Assisted by Wavelet Packet Decomposition
遥感 小波包分解 混合像元 独立成分分析 线性光谱混合模型 Remote sensing Wavelet packet decomposition Mixed pixel Independent component analysis Linear spectral mixture model
摘要
提出将小波包辅助下子带分解的独立成分分析用于高光谱混合像元盲分解.利用小波包分解改进独立成分分析技术,并考虑到高光谱数据的特点提出了高光谱混合像元盲分解方法,该方法能克服独立成分分析方法要求端元光谱统计独立带来的问题.利用两组合成数据和三组室内实测数据对本算法进行测试,证明了本算法能较为准确的提取端元光谱波形和端元丰度,其准确度明显优于独立成分分析方法.该方法为高光谱遥感影像的盲分解提供了一条新的途径.
Abstract
A method called “wavelet packet approach to sub-band decomposition independent component analysis” was introduced to unmix hyperspectral mixed pixels. Using wavelet packet decomposition technique to improve independent component analysis, a blind unmixing method for hyperspectral data was proposed considering the characteristics of hyperspectral data, and this method could overcome the drawback derived from statistical independence assumption in independent component analysis. Two groups of synthetic data and three groups of indoor data were used to evaluate this method. The experiments show that spectra and fractional abundances of the endmemebers can be retrieved precisely using the proposed method, and its accuracy is significantly higher than that of independent component analysis. This approach is useful for blind unmixing of hyperspectral remotely sensed imagery.
李熙, 陈学泓, 陈晓玲, 田礼乔, 陈锋锐. 小波包分解支持下的高光谱混合像元盲分解[J]. 光子学报, 2011, 40(6): 835. LI Xi, CHEN Xue-hong, CHEN Xiao-ling, TIAN Li-qiao, CHEN Feng-rui. Blind Unmixing of Hyperspectral Mixed Pixels Assisted by Wavelet Packet Decomposition[J]. ACTA PHOTONICA SINICA, 2011, 40(6): 835.