Tensor-based methods have been widely studied to attack inverse problems in hyperspectral imaging since a hyperspectral image (HSI) cube can be naturally represented as a third-order tensor, which can perfectly retain the spatial information in the image. In this article, we extend the linear tensor method to the nonlinear tensor method and propose a nonlinear low-rank tensor unmixing algorithm to solve the generalized bilinear model (GBM). Specifically, the linear and nonlinear parts of the GBM can both be expressed as tensors. Furthermore, the low-rank structures of abundance maps and nonlinear interaction abundance maps are exploited by minimizing their nuclear norm, thus taking full advantage of the high spatial correlation in HSIs. Synthetic and real-data experiments show that the low rank of abundance maps and nonlinear interaction abundance maps exploited in our method can improve the performance of the nonlinear unmixing. A MATLAB demo of this work will be available at https://github.com/LinaZhuang for the sake of reproducibility.
翻译:由于超光谱图像(HSI)立方体可以自然地作为第三阶振幅表示,从而完全保留图像中的空间信息,在本篇文章中,我们将线性振幅方法扩展至非线性振幅方法,并提出非线性低压振幅非混合算法,以解决普遍的双线模型(GBM)的性能,具体地说,GBM的线性和非线性部分都可以以色子表示。此外,丰度图和非线性互动丰度图的低等级结构通过尽量减少其核规范加以利用,从而充分利用HSI的高度空间相关性。合成和真实数据实验表明,我们方法中利用的丰度图和非线性互动性丰度图的低等级可以提高非线性能。这项工作的MATLAB演示将在https://github.com/LinaZhuang上提供,以便重新显示。