Abstract: Aiming at the problems of artifacts and edge structure disappearance in hyperspectral images of existing total variation models, an enhanced three-dimensional total variation weighted difference regularization model is proposed in this paper. Firstly, this model does not directly impose sparsity on the gradient map itself, but adds a sparsity constraint to the base matrix of the gradient map. In addition, different from the general sparsity constraint approaches, to avoid the undesirable effects of denoising caused by the limitations of the $ l_{1} $ norm, a sparse constraint is applied to the spatial domain and spectral domain of the hyperspectral image using the total variation weighted difference of $ l_{1} $ norm and $ l_{2} $ norm ( $ l_{1-2} $), respectively. Experimental results show that the proposed method effectively avoids artifacts and image details loss, and has a better denoising effect.
Keywords: hyperspectral image; mixed noise; total variation model; sparsity; gradient map