论文标题
盲目的高光谱抗ume脉的受限非负矩阵分解结合了终结者独立性
Constrained Nonnegative Matrix Factorization for Blind Hyperspectral Unmixing incorporating Endmember Independence
论文作者
论文摘要
高光谱Unmixing(HU)已成为利用高光谱数据的重要技术,因为它将混合像素分解为由分数丰度加权的结束成员的集合。高光谱图像(HSI)的末端成员更有可能由独立来源产生,并以宏观的程度混合,然后再到达成像光谱仪的传感器元素作为混合光谱。在过去的几十年中,许多尝试着重于对常规的非负矩阵分解(NMF)框架施加辅助约束,以有效地将这些混合光谱拆除。作为寻找最佳限制来提取末端成员的有希望的步骤,本文提出了一种新型的盲算法,被称为基于峰度的平滑非负矩阵分解(KBSNMF),该算法基于EndMember Pampepra的概率密度函数的统计独立性。对常规的NMF框架强加这种限制会促进独立末端成员的提取,同时进一步增强基于零件的数据表示。与多种基于NMF的NMF基于NMF的HU Baselines相比,对多种合成HSI数据集进行的实验(具有大量的端成员,光谱带,像素和噪声水平)和三个标准的真实HSI数据集进行了实验。所提出的算法表现出卓越的性能,尤其是从高光谱数据中提取最终成员光谱方面。因此,它可以提升最新的深度学习HU方法的性能,该方法利用Endmember Spectra用作丰富性提取的监督输入数据。
Hyperspectral unmixing (HU) has become an important technique in exploiting hyperspectral data since it decomposes a mixed pixel into a collection of endmembers weighted by fractional abundances. The endmembers of a hyperspectral image (HSI) are more likely to be generated by independent sources and be mixed in a macroscopic degree before arriving at the sensor element of the imaging spectrometer as mixed spectra. Over the past few decades, many attempts have focused on imposing auxiliary constraints on the conventional nonnegative matrix factorization (NMF) framework in order to effectively unmix these mixed spectra. As a promising step toward finding an optimum constraint to extract endmembers, this paper presents a novel blind HU algorithm, referred to as Kurtosis-based Smooth Nonnegative Matrix Factorization (KbSNMF) which incorporates a novel constraint based on the statistical independence of the probability density functions of endmember spectra. Imposing this constraint on the conventional NMF framework promotes the extraction of independent endmembers while further enhancing the parts-based representation of data. Experiments conducted on diverse synthetic HSI datasets (with numerous numbers of endmembers, spectral bands, pixels, and noise levels) and three standard real HSI datasets demonstrate the validity of the proposed KbSNMF algorithm compared to several state-of-the-art NMF-based HU baselines. The proposed algorithm exhibits superior performance especially in terms of extracting endmember spectra from hyperspectral data; therefore, it could uplift the performance of recent deep learning HU methods which utilize the endmember spectra as supervisory input data for abundance extraction.