Article ID Journal Published Year Pages File Type
557600 Biomedical Signal Processing and Control 2012 10 Pages PDF
Abstract

Fluoroscopic images exhibit severe signal-dependent quantum noise, due to the reduced X-ray dose involved in image formation, that is generally modelled as Poisson-distributed. However, image gray-level transformations, commonly applied by fluoroscopic device to enhance contrast, modify the noise statistics and the relationship between image noise variance and expected pixel intensity. Image denoising is essential to improve quality of fluoroscopic images and their clinical information content. Simple average filters are commonly employed in real-time processing, but they tend to blur edges and details. An extensive comparison of advanced denoising algorithms specifically designed for both signal-dependent noise (AAS, BM3Dc, HHM, TLS) and independent additive noise (AV, BM3D, K-SVD) was presented. Simulated test images degraded by various levels of Poisson quantum noise and real clinical fluoroscopic images were considered. Typical gray-level transformations (e.g. white compression) were also applied in order to evaluate their effect on the denoising algorithms. Performances of the algorithms were evaluated in terms of peak-signal-to-noise ratio (PSNR), signal-to-noise ratio (SNR), mean square error (MSE), structural similarity index (SSIM) and computational time. On average, the filters designed for signal-dependent noise provided better image restorations than those assuming additive white Gaussian noise (AWGN). Collaborative denoising strategy was found to be the most effective in denoising of both simulated and real data, also in the presence of image gray-level transformations. White compression, by inherently reducing the greater noise variance of brighter pixels, appeared to support denoising algorithms in performing more effectively.

► Fluoroscopic noise reduction can be significantly improved by considering the specific nature of fluoroscopic noise. ► Little attention has been paid to the design of appropriate denoising algorithms for Poisson noise. ► No observations about the effect of gray-level transformations on the denoising performance have been reported yet. ► We compare the effectiveness of some popular denoising algorithms in presence of fluoroscopic Poisson noise and gray-level transformations. ► Collaborative denoising strategy is the most effective in denoising of both simulated and real data.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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