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Microarray image enhancement by denoising using decimated and undecimated multiwavelet transforms

机译:通过使用抽取和未抽取的多小波变换进行降噪来增强微阵列图像

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摘要

In this paper, we present a new approach to deal with the noise inherent in the microarray image processing procedure. We use the denoising capabilities of decimated and undecimated multiwavelet transforms, DMWT and UMWT respectively, for the removal of noise from microarray data. Multiwavelet transforms, with appropriate initialization, provide sparser representation of signals than wavelet transforms so that their difference from noise can be clearly identified. Also, the redundancy of the UMWT transform is particularly useful in image denoising in order to capture the salient features such as noise or transients. We compare this method with the discrete and stationary wavelet transforms, denoted by DWT and SWT, respectively, and the Wiener filter for denoising microarray images. Results show enhanced image quality using the proposed approach, especially in the undecimated case in which the results are comparable and often outperform that of the stationary wavelet transform. Both multiwavelet transforms outperform the DWT and the Wiener filter.
机译:在本文中,我们提出了一种新的方法来处理微阵列图像处理过程中固有的噪声。我们分别使用抽取和未抽取的多小波变换DMWT和UMWT的去噪功能,从微阵列数据中去除噪声。与适当的初始化相比,经过适当初始化的多小波变换提供的信号比小波变换更稀疏,因此可以清楚地识别出它们与噪声的区别。同样,UMWT变换的冗余在图像去噪中特别有用,以捕获显着特征,例如噪声或瞬变。我们将该方法与分别由DWT和SWT表示的离散小波变换和平稳小波变换以及用于微阵列图像去噪的Wiener滤波器进行了比较。结果表明,使用所提出的方法可以提高图像质量,尤其是在未抽取的情况下,在这种情况下,结果是可比较的,并且通常优于固定小波变换。两种多小波变换均优于DWT和Wiener滤波器。

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