Post-Sampling Aliasing Control for Natural Images
- Dinei Florencio ,
- Ronald W. Schafer
Sampling and reconstruction are usually analyzed under the framework of linear signal processing. Powerful tools like the Fourier transform and optimum linear filter design techniques, allow for a very precise analysis of the process. In particular, an optimum linear filter of any length can be derived under most situations. Many of these tools are not available for non-linear systems, and it is usually difficult to find an optimum non-linear system under any criteria. In this paper we analyze the possibility of using non-linear filtering in the interpolation of subsampled images. We show that a very simple (5×5) non-linear reconstruction filter outperforms (for the images analyzed) linear filters of up to 256×256, including optimum (separable) Wiener filters of any size.