Title :
Sharpening Dermatological Color Images in the Wavelet Domain
Author :
Jung, Cláudio R. ; Scharcanski, Jacob
Author_Institution :
Grad. Sch. of Appl. Comput., Univ. do Vale do Rio dos Sinos, Sao Leopoldo
Abstract :
Tele-dermatology is becoming an important tool for early skin cancer detection in public health, but low-cost cameras tend to cause image blurring, which affect diagnosis quality. Obtaining cost-effective images with diagnosis quality is a current challenge, and this paper proposes a novel method for enhancing the local contrast of dermatological images in the wavelet domain. The distribution of squared gradient magnitudes computed through an undecimated wavelet transform is modeled as a combination of chi-squared and gamma distributions, and a posteriori probabilities are used to discriminate coefficients related to edges from those related to noise or homogeneous regions at each scale of the wavelet decomposition. Consistency across scales is used to preserve coefficients likely to be edge related in consecutive levels of the wavelet decomposition, and local directional smoothing is used to reduce residual noise. Then, a nonlinear enhancement function is applied to wavelet coefficients, so that low-contrast edge-related wavelet coefficients are increased. Our experimental results indicate that the proposed approach can effectively sharpen image details, without amplifying background noise. Preliminary validation by specialists indicate that the proposed sharpening algorithm improves the visual quality of dermatological images.
Keywords :
biomedical optical imaging; image colour analysis; image restoration; medical image processing; optical transfer function; skin; wavelet transforms; chi-squared distribution; color image sharpening; cost effective images; dermatological color images; dermatological diagnosis quality; early skin cancer detection; gamma distribution; image blurring; local contrast enhancement; local directional smoothing; low contrast edge related wavelet coefficients; nonlinear enhancement function; residual noise reduction; squared gradient magnitude distribution; teledermatology; undecimated wavelet transform; wavelet decomposition; wavelet domain; Cameras; Cancer detection; Color; Distributed computing; Public healthcare; Skin cancer; Smoothing methods; Wavelet coefficients; Wavelet domain; Wavelet transforms; Adaptive image denoising; adaptive image enhancement; color image processing; medical imaging; multiresolution analysis; wavelets;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2008.2011113