首页> 外文会议>International Conference on Scale-Space and PDE Methods in Computer Vision; 20050407-09; Hofgeismar(DE) >PDE-Based Deconvolution with Forward-Backward Diffusivities and Diffusion Tensors
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PDE-Based Deconvolution with Forward-Backward Diffusivities and Diffusion Tensors

机译:基于PDE的反卷积,具有前后扩散性和扩散张量

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Deblurring with a spatially invariant kernel of arbitrary shape is a frequent problem in image processing. We address this task by studying nonconvex variational functionals that lead to diffusion-reaction equations of Perona-Malik type. Further we consider novel deblurring PDEs with anisotropic diffusion tensors. In order to improve deblurring quality we propose a continuation strategy in which the diffusion weight is reduced during the process. To evaluate our methods, we compare them to two established techniques: Wiener filtering which is regarded as the best linear filter, and a total variation based deconvolution which is the most widespread deblurring PDE. The experiments confirm the favourable performance of our methods, both visually and in terms of signal-to-noise ratio.
机译:用任意形状的空间不变核去模糊是图像处理中的常见问题。我们通过研究导致Perona-Malik型扩散反应方程的非凸变分函数来解决此任务。此外,我们考虑了具有各向异性扩散张量的新型去模糊PDE。为了提高去模糊质量,我们提出了一种持续策略,其中在该过程中减小了扩散重量。为了评估我们的方法,我们将它们与两种已建立的技术进行了比较:被认为是最佳线性滤波器的维纳滤波,以及最普遍的去模糊PDE的基于总变化的反卷积。实验从视觉和信噪比方面证实了我们方法的良好性能。

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