A Fast Image Denoising Method Based on CP Tensor Analysis

Xinhong Pan, Guoyi Zhang, Li Wang, Guangbo Wang, Jingyi Dong, Jiali Cao
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Abstract

The data represented by tensor can maintain its original form, which is conductive to preserving high dimensional structure and adjacent relation information of data. Tensor factorization plays an instrumental role in signal processing, especially image processing. However, the existing tensor-based fitting algorithms require a lot of time cost and have low fitting accuracy, which is more obvious when the image data is large. In this paper, an accelerated fitting algorithm based on the Canonical Polyadic (CP) tensor analysis is designed to process images. Compared with the existing tensor-based fitting algorithm, the developed algorithm greatly improves the fitting speed with high fitting accuracy, and can quickly reduce the noise of the image. Simulation results for color image show that our method have greatly improved the efficiency of image denoising.
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基于CP张量分析的快速图像去噪方法
用张量表示的数据可以保持其原始形式,有利于保持数据的高维结构和相邻关系信息。张量分解在信号处理,尤其是图像处理中起着重要的作用。然而,现有的基于张量的拟合算法耗时长,拟合精度低,这在图像数据量较大时表现得更为明显。本文设计了一种基于正则多进张量分析的图像加速拟合算法。与现有的基于张量的拟合算法相比,所开发的算法大大提高了拟合速度,具有较高的拟合精度,并且可以快速降低图像的噪声。对彩色图像的仿真结果表明,该方法大大提高了图像去噪的效率。
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