Title :
Robust Kernel Regression for Restoration and Reconstruction of Images from Sparse Noisy Data
Author :
Takeda, H. ; Farsiu, Sina ; Milanfar, Peyman
Author_Institution :
Dept. Electr. Eng., California Univ., Santa Cruz, CA, USA
Abstract :
We introduce a class of robust non-parametric estimation methods which are ideally suited for the reconstruction of signals and images from noise-corrupted or sparsely collected samples. The filters derived from this class are locally adapted kernels which take into account both the local density of the available samples, and the actual values of these samples. As such, they are automatically steered and adapted to both the given sampling "geometry", and the samples\´ "radiometry". As the framework we proposed does not rely upon specific assumptions about noise or sampling distributions, it is applicable to a wide class of problems including efficient image upscaling, high quality reconstruction of an image from as little as 15% of its (irregularly sampled) pixels, super-resolution from noisy and under-determined data sets, state of the art denoising of images corrupted by Gaussian and other noise, effective removal of compression artifacts; and more.
Keywords :
Gaussian noise; image denoising; image restoration; Gaussian noise; image denoising; image reconstruction; image restoration; kernel regression; non-parametric estimation method; radiometry; sparse noisy data; Filters; Gaussian noise; Geometry; Image reconstruction; Image restoration; Image sampling; Kernel; Noise robustness; Radiometry; Signal restoration; Inverse problem; image reconstruction; nonlinear estimation; piecewise polynomial approximation;
Conference_Titel :
Image Processing, 2006 IEEE International Conference on
Conference_Location :
Atlanta, GA
Print_ISBN :
1-4244-0480-0
DOI :
10.1109/ICIP.2006.312573