Spatial-Spectral Total Variation (SSTV) can quantify local smoothness of image structures, so it is widely used in hyperspectral image (HSI) processing tasks. Essentially, SSTV assumes a sparse structure of gradient maps calculated along the spatial and spectral directions. In fact, these gradient tensors are not only sparse, but also (approximately) low-rank under FFT, which we have verified by numerical tests and theoretical analysis. Based on this fact, we propose a novel TV regularization to simultaneously characterize the sparsity and low-rank priors of the gradient map (LRSTV). The new regularization not only imposes sparsity on the gradient map itself, but also penalize the rank on the gradient map after Fourier transform along the spectral dimension. It naturally encodes the sparsity and lowrank priors of the gradient map, and thus is expected to reflect the inherent structure of the original image more faithfully. Further, we use LRSTV to replace conventional SSTV and embed it in the HSI processing model to improve its performance. Experimental results on multiple public data-sets with heavy mixed noise show that the proposed model can get 1.5dB improvement of PSNR.
翻译:根据这个事实,我们提议对电视进行新颖的规范化,以同时描述梯度图(LRSTV)的宽度和低位前端。 新的规范化不仅强制要求梯度图本身,而且还惩罚沿空间和光谱方向计算出来的梯度图的等级。事实上,这些梯度梯度梯度梯度梯度梯度阵列不仅稀少,而且(大约)在FFFT之下是低级的,我们已经通过数字测试和理论分析核实了这些梯度梯度阵列。此外,我们提议对电视进行新颖的规范化,以同时描述梯度图(LRSTV)的宽度和低位位前端。新的规范化不仅迫使梯度图本身变得松散,而且惩罚沿光谱层面在Fourier变换后的梯度图的等级。它自然地将梯度图的宽度和低位前端编码成宽度图,因此预计将更加忠实地反映原始图像的固有结构。 此外,我们用LRSTV来取代常规的SSTV,并将其嵌入HS处理模型,以提高其性能。 。在多个公共数据集上实验结果,用重混合噪音显示模型1.5B。