DocumentCode
1533811
Title
Design and analysis of vector color error diffusion halftoning systems
Author
Damera-Venkata, Niranjan ; Evans, Brian L.
Author_Institution
Embedded Signal Process. Lab., Texas Univ., Austin, TX, USA
Volume
10
Issue
10
fYear
2001
fDate
10/1/2001 12:00:00 AM
Firstpage
1552
Lastpage
1565
Abstract
Traditional error diffusion halftoning is a high quality method for producing binary images from digital grayscale images. Error diffusion shapes the quantization noise power into the high frequency regions where the human eye is the least sensitive. Error diffusion may be extended to color images by using error filters with matrix-valued coefficients to take into account the correlation among color planes. For vector color error diffusion, we propose three contributions. First, we analyze vector color error diffusion based on a new matrix gain model for the quantizer, which linearizes vector error diffusion. The model predicts the key characteristics of color error diffusion, esp. image sharpening and noise shaping. The proposed model includes linear gain models for the quantizer by Ardalan and Paulos (1987) and by Kite et al. (1997) as special cases. Second, based on our model, we optimize the noise shaping behavior of color error diffusion by designing error filters that are optimum with respect to any given linear spatially-invariant model of the human visual system. Our approach allows the error filter to have matrix-valued coefficients and diffuse quantization error across color channels in an opponent color representation. Thus, the noise is shaped into frequency regions of reduced human color sensitivity. To obtain the optimal filter, we derive a matrix version of the Yule-Walker equations which we solve by using a gradient descent algorithm. Finally, we show that the vector error filter has a parallel implementation as a polyphase filterbank
Keywords
FIR filters; gradient methods; image colour analysis; matrix algebra; quantisation (signal); two-dimensional digital filters; Yule-Walker equations; binary images; color channels; color images; color planes; diffuse quantization error; digital grayscale images; error filters; gradient descent algorithm; high frequency regions; image sharpening; linear gain models; matrix gain model; matrix-valued coefficients; noise shaping; noise shaping behavior; opponent color representation; parallel implementation; polyphase filterbank; quantization noise power; vector color error diffusion halftoning systems; Colored noise; Filters; Frequency; Gray-scale; Humans; Image color analysis; Noise shaping; Quantization; Shape; Vectors;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/83.951540
Filename
951540
Link To Document