Title :
Inverse halftoning and kernel estimation for error diffusion
Author_Institution :
Hewlett-Packard Co., Palo Alto, CA, USA
fDate :
4/1/1995 12:00:00 AM
Abstract :
Two different approaches in the inverse halftoning of error-diffused images are considered. The first approach uses linear filtering and statistical smoothing that reconstructs a gray-scale image from a given error-diffused image. The second approach can be viewed as a projection operation, where one assumes the error diffusion kernel is known, and finds a gray-scale image that will be halftoned into the same binary image. Two projection algorithms, viz., minimum mean square error (MMSE) projection and maximum a posteriori probability (MAP) projection, that differ on the way an inverse quantization step is performed, are developed. Among the filtering and the two projection algorithms, MAP projection provides the best performance for inverse halftoning. Using techniques from adaptive signal processing, we suggest a method for estimating the error diffusion kernel from the given halftone. This means that the projection algorithms can be applied in the inverse halftoning of any error-diffused image without requiring any a priori information on the error diffusion kernel. It is shown that the kernel estimation algorithm combined with MAP projection provide the same performance in inverse halftoning compared to the case where the error diffusion kernel is known
Keywords :
adaptive signal processing; error analysis; filtering theory; image reconstruction; maximum likelihood estimation; quantisation (signal); smoothing methods; MAP projection; MMSE projection; adaptive signal processing; binary image; error diffused images; error diffusion kernel; gray scale image reconstruction; inverse halftoning; inverse quantization; kernel estimation algorithm; linear filtering; maximum a posteriori probability projection; minimum mean square error; projection algorithms; projection operation; statistical smoothing; Estimation error; Gray-scale; Image reconstruction; Kernel; Maximum likelihood detection; Mean square error methods; Nonlinear filters; Projection algorithms; Quantization; Smoothing methods;
Journal_Title :
Image Processing, IEEE Transactions on