Video Denoising using Temporal Coherency of Video Frames and Sparse Representation

Azadeh Torkashvand, A. Behrad
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Abstract

Sparse representation based on dictionary learning has been widely used in many applications over the past decade. In this article, a new method is proposed for removing noise from video images using sparse representation and a trained dictionary. To enhance the noise removal capability, the proposed method is combined with a block matching algorithm to take the advantage of the temporal dependency of video images and increase the quality of the output images. The simulations performed on different test data show the appropriate response of the proposed algorithm in terms of video image output quality.
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基于视频帧时间相干和稀疏表示的视频去噪
在过去的十年里,基于字典学习的稀疏表示在许多应用中得到了广泛的应用。本文提出了一种利用稀疏表示和训练字典来去除视频图像噪声的新方法。为了增强去噪能力,将该方法与块匹配算法相结合,利用视频图像的时间依赖性,提高输出图像的质量。在不同的测试数据上进行了仿真,结果表明该算法对视频图像输出质量的响应是适当的。
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