DocumentCode :
2831625
Title :
Using wavelets on denoising infrared medical images
Author :
Moraes, Marcel S. ; Borchartt, Tiago B. ; Conci, Aura ; MacHenry, Trueman
Author_Institution :
Comput. Sci. Dept., Comput. Inst., Fed. Fluminense Univ., Niteroi, Brazil
fYear :
2015
fDate :
17-19 March 2015
Firstpage :
1791
Lastpage :
1798
Abstract :
This work presents the conclusions of an experimental study that intends to find the best procedure for reducing the noise of medium resolution infrared images. The goal is to find a good scheme for an image database suitable for use in developing a system to aid breast disease diagnostics. In particular, to use infrared images in the screening and postoperative follow-up in the UFF university hospital, and to combine this with other types of image based diagnoses. Seven wavelet types (Biorthogonal, Coiflets, Daubechies, Haar, Meyer, Reverse Biorthogonal and Symmlets) with various vanishing moments (such as Symmlets, where this number goes from 2 to 28, Daubechies from 1 to 45 and Coiflets 1 to 5) comprising a total of 108 different variations of wavelet functions are compared in a denoising scheme to explore their difference with respect to image quality. Three groups of Additive White Gaussian Noise levels (σ = 5, 25 and 50) are used to evaluate the relations among the approaches to threshold the wavelet coefficient (hard or soft), and the image quality after transformation-denoising-storage-decompression. Levels of decomposition are investigated in a new thresholding scheme, where the decision about the coefficient to be eliminated considers all variation, aiming for the best quality of reconstruction. Eight images of the same type and resolution are used in order to find the mean, median, range and standard deviation of the 432 combinations for each level of noise. Moreover, three evaluators (Normalized Cross-Correlation, Signal to Noise Ratio and Root Mean Squared Error) are considered for recommendation of the best possible combination of parameters.
Keywords :
image denoising; image resolution; image segmentation; infrared imaging; medical image processing; patient diagnosis; wavelet transforms; UFF university hospital; additive white Gaussian noise levels; image based diagnoses; image database; image quality; infrared medical image denoising; mean deviation; median deviation; medium resolution infrared images; postoperative follow-up; range deviation; standard deviation; thresholding scheme; transformation-denoising-storage-decompression; wavelet coefficient; wavelet functions; Biomedical imaging; Discrete wavelet transforms; Image reconstruction; Noise; Noise level; Noise reduction; Gaussian noise; Infrared imaging; adaptive noise reduction; additive white Gaussian noise; wavelet denoising;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Technology (ICIT), 2015 IEEE International Conference on
Conference_Location :
Seville
Type :
conf
DOI :
10.1109/ICIT.2015.7125357
Filename :
7125357
Link To Document :
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