首页> 外文会议>Asian Conference on Computer Vision(ACCV 2007) pt.1; 20071118-22; Tokyo(JP) >How Marginal Likelihood Inference Unifies Entropy, Correlation and SNR-Based Stopping in Nonlinear Diffusion Scale-Spaces
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How Marginal Likelihood Inference Unifies Entropy, Correlation and SNR-Based Stopping in Nonlinear Diffusion Scale-Spaces

机译:边际似然推断如何统一非线性扩散尺度空间中的熵,相关性和基于SNR的停止

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摘要

Iterative smoothing algorithms are frequently applied in image restoration tasks. The result depends crucially on the optimal stopping (scale selection) criteria. An attempt is made towards the unification of the two frequently applied model selection ideas: (ⅰ) the earliest time when the 'entropy of the signal' reaches its steady state, suggested by J. Sporring and J. Weickert (1999), and (ⅱ) the time of the minimal 'correlation' between the diffusion outcome and the noise estimate, investigated by P. Mrazek and M. Navara (2003). It is shown that both ideas are particular cases of the marginal likelihood inference. Better entropy measures are discovered and their connection to the generalized signal-to-noise ratio is emphasized.
机译:迭代平滑算法经常应用于图像恢复任务。结果关键取决于最佳停止(标度选择)标准。 J.Sporring和J.Weickert(1999)建议,尝试统一两个常用的模型选择思想:(ⅰ)``信号熵''达到稳态的最早时间。 ⅱ)扩散结果与噪声估计之间最小的“相关”时间,由P. Mrazek和M. Navara(2003)研究。结果表明,这两种想法都是边际似然推断的特殊情况。发现了更好的熵测度,并强调了它们与广义信噪比的联系。

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