deblur
Deblur, in the context of imaging, refers to the process of recovering a sharp image from a blurred observation. Blur arises from factors such as camera motion, defocus, atmospheric turbulence, or lens imperfections, and is commonly modeled as a convolution of a latent image with a blur kernel or point spread function, plus noise.
Deblurring is an inverse problem that is typically ill-posed: multiple sharp images can produce the same blurred
Classical approaches include inverse filtering and Wiener filtering, which are linear methods sensitive to noise. Iterative
More recently, data-driven methods have become dominant. Deep learning models trained on paired blurred and sharp
Applications span consumer photography, surveillance, astronomy, and biomedical imaging, wherever motion or defocus blur degrades image
Evaluation commonly uses metrics such as PSNR and SSIM, alongside qualitative perceptual assessment. Deblurring can introduce
Benchmark datasets include synthetic and real-blur collections, such as the GoPro deblurring dataset and earlier blind