DocumentCode
2754935
Title
Design and implementation of denoising filter for echocardiographic images based on wavelet method
Author
Kang, Su Cheol ; Hong, Seung Hoag
Author_Institution
R&D Center, INCOM J&C, Seoul, South Korea
fYear
2000
fDate
2000
Firstpage
80
Lastpage
83
Abstract
One of the most important aspects of diagnostic echocardiography is the need to reduce speckle noise and to improve image quality. Here the authors prepose a simple and effective filter design for image denoising and contrast enhancement based on the multiscale wavelet denoising method. Wavelet threshold algorithms replace wavelet coefficients of small magnitude with zero and keep or shrink the other coefficients. This is basically a local procedure, since wavelet coefficients characterize the local regularity of a function. Next, the authors estimate the distribution of noise within the echocardiographic image. Then they apply a wavelet threshold algorithm. A common way of the estimating the speckle noise level in coherent imaging to calculate the mean-to-standard-deviation ratio of the pixel intensity, often termed the Equivalent Number of Looks (ENL) over a uniform image area. Unfortunately, the authors found this measure not very robust, mainly because of the difficulty in identification of a uniform area in a real image. For this reason, they only use here the S/MSE ratio which corresponds to the standard SNR in the case of additive noise. The authors have simulated some echocardiographic images by specialized hardware for real-time application: processing of a 512*512 images takes about 1 min. The authors´ experiments show that the optimal threshold level depends on the spectral content of the image. High spectral content tends to over-estimate the noise standard deviation estimation performed at the finest level of the DWT. As a result, a lower threshold parameter is required to get the optimal S/MSE. The standard WCS theory predicts a threshold that depends on the number of signal samples only
Keywords
echocardiography; image enhancement; medical image processing; noise; speckle; wavelet transforms; 1 min; coherent imaging; denoising filter implementation; equivalent number of looks; high spectral content; lower threshold parameter; mean-to-standard-deviation ratio; medical diagnostic imaging; noise distribution; pixel intensity; signal samples number; speckle noise level; wavelet coefficients; wavelet threshold algorithm; Area measurement; Echocardiography; Filters; Image denoising; Image quality; Noise level; Noise reduction; Pixel; Speckle; Wavelet coefficients;
fLanguage
English
Publisher
ieee
Conference_Titel
Microtechnologies in Medicine and Biology, 1st Annual International, Conference On. 2000
Conference_Location
Lyon
Print_ISBN
0-7803-6603-4
Type
conf
DOI
10.1109/MMB.2000.893746
Filename
893746
Link To Document