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首页> 外文期刊>Journal of the Chinese Institute of Engineers >Analysis of effect of cycle spinning on wavelet- and curvelet-based denoising methods on brain CT images
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Analysis of effect of cycle spinning on wavelet- and curvelet-based denoising methods on brain CT images

机译:循环旋转对基于小波和曲线波的脑CT图像去噪方法的影响分析

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摘要

The purpose of this paper is to carry out the assessment of effect of cycle spinning on wavelet- and curvelet-based noise reduction methods on brain CT images. In particular, multiscale curvelet- and wavelet-based denoising methods are evaluated with and without cycle spinning. This assessment is focused not only on the noise suppression but also on fine details preservation. The experimental results show that the cycle spinning-based curvelet method outperforms not only other curvelet-based methods but also the wavelet-based methods. The quality assessment parameters taken in this paper are signal-to-noise ratio (SNR), peak-signal-to-noise ratio (PSNR), universal quality index (UQI), structural similarity index metrics (SSIM), and edge keeping index (EKI).
机译:本文的目的是评估循环旋转对脑CT图像基于小波和基于曲线波的降噪方法的效果。特别是,在有或没有循环旋转的情况下,都将评估基于多尺度曲线波和小波的降噪方法。该评估不仅关注噪声抑制,还关注细节保留。实验结果表明,基于循环旋转的Curvelet方法不仅优于其他基于Curvelet的方法,而且优于基于Wavelet的方法。本文采用的质量评估参数是信噪比(SNR),峰信噪比(PSNR),通用质量指数(UQI),结构相似性指标度量(SSIM)和边缘保持指数(EKI)。

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