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Image denoising with morphology- and size-adaptive block-matching transform domain filtering

机译:图像去噪与形态学和大小 - 自适应块匹配变换域滤波

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Abstract BM3D is a state-of-the-art image denoising method. Its denoised results in the regions with strong edges can often be better than in the regions with smooth or weak edges, due to more accurate block-matching for the strong-edge regions. So using adaptive block sizes on different image regions may result in better image denoising. Based on these observations, in this paper, we first partition each image into regions belonging to one of the three morphological components, i.e., contour, texture, and smooth components, according to the regional energy of alternating current (AC) coefficients of discrete cosine transform (DCT). Then, we can adaptively determine the block size for each morphological component. Specifically, we use the smallest block size for the contour components, the medium block size for the texture components, and the largest block size for the smooth components. To better preserve image details, we also use a multi-stage strategy to implement image denoising, where every stage is similar to the BM3D method, except using adaptive sizes and different transform dimensions. Experimental results show that our proposed algorithm can achieve higher PSNR and MSSIM values than the BM3D method, and also better visual quality of denoised images than by the BM3D method and some other existing state-of-the-art methods.
机译:摘要BM3D是一种最先进的图像去噪方法。由于对强边区域更精确的块匹配,其具有强大边缘的区域的去噪结果通常比具有光滑或弱边缘的区域更好。因此,在不同图像区域上使用自适应块大小可能导致更好的图像去噪。在本文的基础上,我们首先将每个图像分配到属于三种形态部件中的一个的区域,即轮廓,纹理和平滑部件,根据离散余弦的交流(AC)系数的区域能量变换(DCT)。然后,我们可以自适应地确定每个形态分量的块大小。具体而言,我们使用轮廓组件的最小块大小,纹理组件的中块大小,以及平滑组件的最大块大小。为了更好地保护图像细节,我们还使用多级策略来实现图像去噪,其中每个阶段类似于BM3D方法,除非使用自适应大小和不同的变换尺寸。实验结果表明,我们所提出的算法可以实现比BM3D方法更高的PSNR和MSSIM值,以及比BM3D方法和其他现有最先进的方法更好的视觉质量。

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