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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >Image and Video Denoising Using Adaptive Dual-Tree Discrete Wavelet Packets
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Image and Video Denoising Using Adaptive Dual-Tree Discrete Wavelet Packets

机译:使用自适应双树离散小波包进行图像和视频降噪

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We investigate image and video denoising using adaptive dual-tree discrete wavelet packets (ADDWP), which is extended from the dual-tree discrete wavelet transform (DDWT). With ADDWP, DDWT subbands are further decomposed into wavelet packets with anisotropic decomposition, so that the resulting wavelets have elongated support regions and more orientations than DDWT wavelets. To determine the decomposition structure, we develop a greedy basis selection algorithm for ADDWP, which has significantly lower computational complexity than a previously developed optimal basis selection algorithm, with only slight performance loss. For denoising the ADDWP coefficients, a statistical model is used to exploit the dependency between the real and imaginary parts of the coefficients. The proposed denoising scheme gives better performance than several state-of-the-art DDWT-based schemes for images with rich directional features. Moreover, our scheme shows promising results without using motion estimation in video denoising. The visual quality of images and videos denoised by the proposed scheme is also superior.
机译:我们研究使用自适应双树离散小波包(ADDWP)进行图像和视频降噪,该算法是从双树离散小波变换(DDWT)扩展而来的。使用ADDWP,DDWT子带将进一步分解为具有各向异性分解的小波包,因此与DDWT小波相比,所得小波具有更长的支持区域和更多方向。为了确定分解结构,我们为ADDWP开发了一个贪婪的基础选择算法,该算法的计算复杂度明显低于以前开发的最佳基础选择算法,并且性能损失很小。为了对ADDWP系数进行降噪,使用统计模型来利用系数的实部和虚部之间的依赖性。对于具有丰富方向特征的图像,所提出的降噪方案比基于DDWT的最新技术方案具有更好的性能。此外,我们的方案在不对视频去噪中使用运动估计的情况下显示出令人鼓舞的结果。所提出的方案所去除的图像和视频的视觉质量也更高。

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