Title :
Wavelet thresholding via MDL for natural images
Author :
Hansen, Mark ; Yu, Bin
Author_Institution :
Lucent Technol Bell Labs., Murray Hill, NJ, USA
fDate :
8/1/2000 12:00:00 AM
Abstract :
We study the application of Rissanen´s (1989) principle of minimum description length (MDL) to the problem of wavelet denoising and compression for natural images. After making a connection between thresholding and model selection, we derive an MDL criterion based on a Laplacian model for noiseless wavelet coefficients. We find that this approach leads to an adaptive thresholding rule. While achieving mean-squared-error performance comparable with other popular thresholding schemes, the MDL procedure tends to keep far fewer coefficients. From this property, we demonstrate that our method is an excellent tool for simultaneous denoising and compression. We make this claim precise by analyzing MDL thresholding in two optimality frameworks; one in which we measure rate and distortion based on quantized coefficients and one in which we do not quantize, but instead record rate simply as the number of nonzero coefficients
Keywords :
adaptive systems; data compression; decoding; image coding; mean square error methods; minimax techniques; quantisation (signal); rate distortion theory; transform coding; wavelet transforms; Laplacian model; MDL criterion; MDL thresholding; adaptive thresholding rule; distortion measurement; image compression; mean-squared-error performance; minimax optimal scheme; minimum description length; model selection; natural images; noiseless wavelet coefficients; nonzero coefficients; quantized coefficients; rate measurement; wavelet compression; wavelet denoising; wavelet thresholding; Additive white noise; Distortion measurement; Image coding; Laplace equations; Minimax techniques; Noise reduction; Rate distortion theory; Signal analysis; Wavelet coefficients; White noise;
Journal_Title :
Information Theory, IEEE Transactions on