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Bayesian Estimation Based Mumford-Shah Regularization for Blur Identification and Segmentation in Video Sequences

机译:基于贝叶斯估计的Mumford-Shah正规化模糊识别和视频序列分割

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We present an extended Mumford-Shah (MS) regularization for blind image deconvolution and segmentation in the context of Bayesian estimation. The extended MS functional is added to have costs for the identification of blur via a newly introduced prior solution space. The functional is minimized using Γ-convergence approximation by projecting iterations onto a newly designed embedded alternating minimization within Neumann conditions. Image segmentation is closely related to accurate blur identification and restoration, that is, the problem of estimating an image based on its degraded observation. Experiments show that the proposed algorithm is efficient and robust in that it can handle images that are formed in different environments with different types and amounts of blur and noise.
机译:在贝叶斯估计的背景下,我们为盲目图像解卷积和分割提供了一个扩展的Mumford-Shah(MS)正常化。添加了扩展的MS功能以通过新引入的先前解决方案具有用于识别模糊的成本。通过将迭代投影到新设计的嵌入式交替的最小化的新设计的嵌入式条件下,使用γ收敛近似来最小化功能。图像分割与准确的模糊识别和恢复密切相关,即,基于其降级观察估计图像的问题。实验表明,该算法具有高效且稳健的算法,因为它可以处理在具有不同类型和量的不同类型和噪声中形成的图像。

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