High-quality non-blind motion deblurring

Traditional non-blind motion deblurring methods are sensitive to kernel estimate errors and image noise, thus suffering from either ringing artifacts, enlarged image noise, or over-smoothed image details. We introduce a robust non-blind deblurring algorithm that produces high quality results even from many challenging images with noisy kernels. We adopt the Gaussian Scale Mixture Fields of Experts (GSM FOE) model and the smoothness constraint as image prior, and use the iterative re-weight least-square (IRLS) algorithm to produce the temporal result. The residual deconvolution suite is used to restore the lost image details. We denoise the result using our std-controlled cross bilateral filter. The experimental results are much better than those of previous approaches.