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A Bayesian Approach of Hyperanalytic Wavelet Transform Based Denoising

机译:基于多语的小波变换的贝叶斯方法

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The property of shift-invariance associated with a good directional selectivity is important for the application of a wavelet transform, (WT), in many fields of image processing. Generally, complex wavelet transforms, like for example the Double Tree Complex Wavelet Transform, (DTCWT), have these good properties. In this paper we propose the use of a new implementation of such a WT, recently introduced, namely the hyperanalytic wavelet transform, (HWT), in denoising applications. The proposed denoising method is very simple, implying three steps: the computation of the forward WT, the filtering in the wavelets domain and the computation of the inverse WT, (IWT). The goal of this paper is the association of a new implementation of the HWT, recently proposed, with a maximum a posteriori (MAP) filter. Some simulation examples and comparisons prove the performances of the proposed denoising method.
机译:与良好定向选择性相关联的移位不变性的属性对于应用小波变换(WT),在图像处理的许多领域中是重要的。通常,复杂的小波变换,例如双树复合小波变换(DTCWT),具有这些良好的性质。在本文中,我们提出了使用这种WT的新实施,最近引入的,即高素岩小波变换(HWT),在去噪应用中。所提出的去噪方法非常简单,暗示三个步骤:向前WT计算,小波域中的滤波和反向WT的计算,(IWT)。本文的目标是最近提出的HWT新实施的协会,最大后验(MAP)过滤器。一些仿真实例和比较证明了所提出的去噪方法的性能。

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