2021
DOI: 10.1108/dta-09-2020-0221
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An assessment of noise variance estimations in Bayes threshold denoising under stationary wavelet domain on brain lesions and tumor MRIs

Abstract: PurposeA major key success factor regarding proficient Bayes threshold denoising refers to noise variance estimation. This paper focuses on assessing different noise variance estimations in three Bayes threshold models on two different characteristic brain lesions/tumor magnetic resonance imaging (MRIs).Design/methodology/approachHere, three Bayes threshold denoising models based on different noise variance estimations under the stationary wavelet transforms (SWT) domain are mainly assessed, compared to state-… Show more

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“…Wavelet transformation operates by decomposing the image into multiple frequency sub-bands, allowing for a multi-resolution analysis [23]. The high-frequency components, which often contain noise and irrelevant details, are attenuated or eliminated.…”
Section: Wavelet Transformmentioning
confidence: 99%
“…Wavelet transformation operates by decomposing the image into multiple frequency sub-bands, allowing for a multi-resolution analysis [23]. The high-frequency components, which often contain noise and irrelevant details, are attenuated or eliminated.…”
Section: Wavelet Transformmentioning
confidence: 99%