Department of Electrical Engineering, University of California, Santa Cruz, CA 95064, USA.
IEEE Trans Image Process. 2001;10(4):573-83. doi: 10.1109/83.913592.
Superresolution reconstruction produces a high-resolution image from a set of low-resolution images. Previous iterative methods for superresolution had not adequately addressed the computational and numerical issues for this ill-conditioned and typically underdetermined large scale problem. We propose efficient block circulant preconditioners for solving the Tikhonov-regularized superresolution problem by the conjugate gradient method. We also extend to underdetermined systems the derivation of the generalized cross-validation method for automatic calculation of regularization parameters. The effectiveness of our preconditioners and regularization techniques is demonstrated with superresolution results for a simulated sequence and a forward looking infrared (FLIR) camera image sequence.
超分辨率重建从一组低分辨率图像中生成高分辨率图像。以前的超分辨率迭代方法没有充分解决病态和典型欠定的大规模问题的计算和数值问题。我们通过共轭梯度法为解决泰克诺夫正则化超分辨率问题提出了有效的块循环预条件器。我们还将广义交叉验证方法的推导扩展到欠定系统,以自动计算正则化参数。通过对模拟序列和前视红外(FLIR)相机图像序列的超分辨率结果,证明了我们的预条件器和正则化技术的有效性。