Sparse Domain Gaussianization for Multi-Variate Statistical Modeling of Retinal OCT Images

(2020) Sparse Domain Gaussianization for Multi-Variate Statistical Modeling of Retinal OCT Images. Ieee Transactions on Image Processing. pp. 6873-6884. ISSN 1057-7149

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Abstract

In this paper, a multivariate statistical model that is suitable for describing Optical Coherence Tomography (OCT) images is introduced. The proposed model is comprised of a multivariate Gaussianization function in sparse domain. Such an approach has two advantages, i.e. 1) finding a function that can effectively transform the input - which is often not Gaussian - into normally distributed samples enables the reliable application of methods that assume Gaussianity, 2) although multivariate Gaussianization in spatial domain is a complicated task and rarely results in closed-form analytical model, by transferring data to sparse domain, our approach facilitates multivariate statistical modeling of OCT images. To this end, a proper multivariate probability density function (pdf) which considers all three properties of OCT images in sparse domains (i.e. compression, clustering, and persistence properties) is designed and the proposed sparse domain Gaussianization framework is established. Using this multivariate model, we show that the OCT images often follow a 2-component multivariate Laplace mixture model in the sparse domain. To evaluate the performance of the proposed model, it is employed for OCT image denoising in a Bayesian framework. Visual and numerical comparison with previous prominent methods reveals that our method improves the overall contrast of the image, preserves edges, suppresses background noise to a desirable amount, but is less capable of maintaining tissue texture. As a result, this method is suitable for applications where edge preservation is crucial, and a clean noiseless image is desired.

Item Type: Article
Keywords: Transforms Hidden Markov models Correlation Data models Probability density function Noise reduction Computational modeling Statistical model multivariate probability density function sparse Gaussianization optical coherence tomography denoising OPTICAL COHERENCE TOMOGRAPHY SPECKLE NOISE-REDUCTION MIXTURE-MODELS TRANSFORM SEGMENTATION COMPRESSION SUPPRESSION ALGORITHM FILTER
Subjects: WN Radiology. Diagnostic Imaging > WN 180-240 Diagnostic Imaging
Divisions: Medical Image and Signal Processing Research Center
Page Range: pp. 6873-6884
Journal or Publication Title: Ieee Transactions on Image Processing
Journal Index: ISI
Volume: 29
Identification Number: https://doi.org/10.1109/TIP.2020.2994454
ISSN: 1057-7149
Depositing User: Zahra Otroj
URI: http://eprints.mui.ac.ir/id/eprint/12132

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