Denoising Of Digital Images Using Cyclespinning Algorithm With Shifted DWT

Bhumika Neole
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Abstract

Noise determination and estimating a signal along with all its details proves a challenging task in signal processing. This issue has been addressed in the past using various discrete wavelet transform (DWT) based techniques. The signal is estimated as linear average of individual estimates derived from translated and wavelet-thresholded versions of a noisy signal by cycle spinning technique. In this paper, we propose a modified cycle zpinning algorithm with a new scaled down threshold of wavelet shrinkage for denoising images containing zero mean Gaussian noise using linear average of reconstructions obtained from shifted sequences’ DWT. This considerably improves the denoising performance of the conventional recursive cycle spinning algorithm and requires drasticallyless computations. Denoising performance of the proposed algorithm is benchmarked with published Recursive Cycle spinning, Buades NL means and Dual tree Complex Wavelet algorithms visually and quantitatively.
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基于移位DWT的循环旋转算法的数字图像去噪
在信号处理中,噪声的确定和估计及其所有细节是一项具有挑战性的任务。这个问题已经在过去使用各种基于离散小波变换(DWT)的技术来解决。通过循环旋转技术对噪声信号的转换和小波阈值版本进行估计,估计信号为单个估计的线性平均值。在本文中,我们提出了一种改进的循环缩放算法,该算法采用了一种新的小波缩减阈值,用于对移位序列的DWT重建结果进行线性平均,对含有零高斯噪声的图像进行去噪。这大大提高了传统递归循环旋转算法的去噪性能,并且需要的计算量大大减少。该算法的去噪性能与已发表的递归循环旋转、Buades NL均值和对偶树复小波算法进行了直观和定量的基准测试。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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