In this paper, a convolutional sparse coding method based on global structure characteristics and spectral correlation is proposed for the reconstruction of compressive spectral images. The spectral data is regarded as the convolution sum of the convolution kernel and the corresponding coefficients, using the convolution kernel operates the global image information, preserving the structure information of the spectral image in the spatial dimension. To take full exploration of the constraints between spectra, the coefficients corresponding to the convolution kernel are constrained by the L_(2,1)norm to improve spectral accuracy. And, to solve the problem that convolutional sparse coding is insensitive to low frequency, the global total-variation (TV) constraint is added to estimate the low-frequency components. It not only ensures the effective estimation of the low-frequency but also transforms the convolutional sparse coding into a de-noising process, which makes the reconstructing process simpler. Simulations show that compared with the current mainstream optimization methods, the proposed method can improve the reconstruction quality by up to 4 dB in PSNR and 10% in SSIM, and has a great improvement in the details of the reconstructed image.
翻译:在本文中,根据全球结构特征和光谱相关关系,提出了一种基于全球结构特性和光谱关联的分层稀疏编码方法,用于重建压缩光谱图像。光谱数据被视为卷发内核和相应系数的卷积总和,使用卷发内核,操作全球图像信息,保存光谱图像在空间维度中的结构信息。为了充分探索光谱之间的限制,与卷发内核相对应的系数受L_(2,1)诺姆的限制,以提高光谱精度。此外,为了解决卷发性稀释编码对低频率不敏感的问题,在估计低频率组成部分时增加了全球总变换(TV)的制约。这不仅能确保有效估计低频率,而且还将卷发的编码转换成一个去注意过程,使重建过程更加简单。模拟表明,与目前的主流优化方法相比,拟议方法可以提高重建质量,即PSNR的4 dB和SSIM的10 %,并大大改进了图像的细节。