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An Improved BM3D Method for eDNA Mieroarray Image Denoising

机译:一种改进的EDNA Mieroarray图像去噪的BM3D方法

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Microarray arouse tremendous attentions owing to its outstanding advantages on dealing with tens of thousands genes simultaneously, and image processing is a crucial step in microarray analysis. However, real images are usually obtained according to a series of procedures, which will bring noises or artifacts that result in poor image quality. To improve the image processing accuracy, noise reduction is crucial. Therefore, in this paper, we introduce the state-of-art method, block-matching and 3D filtering algorithm, into microarray image denoising. First, median filter and contrast enhancement method are added into image preprocessing to improve the image quality. Next, the threshold and Wiener contraction coefficient involved in initial and final estimation are improved according to image variance. Experiments on real images drawn from the SMD, GEO, BCM, DeRisi and SIB datasets indicating that the proposed method perform better compared to the Donoho threshold, generalized wavelet, adaptive thresholding, compressed sensing, non-local means methods. Quantitative analysis on 127 sub-grids also verifies the efficiency of our proposed method.
机译:芯片引起了巨大的关注,由于其突出的优点与数以万计的基因同时处理和图像处理是在微阵列分析的关键步骤。然而,真正的图像根据一系列程序,这将带来其导致较差的图像质量的噪声或假象通常获得。为了提高图像的加工精度,降低噪音是至关重要的。因此,在本文中,我们介绍了国家的技术方法中,块匹配和三维滤波算法,成微阵列图像去噪。首先,中值滤波器和对比度增强方法加入到图像预处理,以提高图像质量。接着,参与初始和最终估计的阈值和维纳收缩系数根据图像方差提高。从SMD,GEO,BCM绘制在真实图像的实验,DeRisi和SIB的数据集表示所提出的方法相比,Donoho等阈值,广义小波,自适应阈值,压缩传感,非局部平均方法有更好的表现。 127子网格定量分析也验证了我们提出的方法的有效性。

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