尖尖信号的恢复:一种新的最优估计和比较

C. Heinrich, J. Bercher, G. L. Besnerais, G. Demoment
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引用次数: 3

摘要

讨论了被线性系统扭曲和被加性噪声破坏的尖序列的恢复。处理这个问题的一个(现在)经典方法是使用贝叶斯方法和序列的阿伯努利-高斯(BG)先验模型。作者使用伯努利-高斯加高斯(BCG)先验模型对该方法进行了改进。这种估计方法需要后验概率分布的最大化,这是不可能实现最优的。因此,作者提出了一种新的非贝叶斯估计方案,该方案由kullback - leibler信息或交叉熵导出。在Gamboa(1989)和le Besnerais(1995)中,这种相当普遍的方法被称为最大熵均值法(MEMM),它牢牢地建立在凸分析的基础上,并产生了一个唯一的解,可以在实践中有效地计算,并且在这个意义上,它是真正的最优解。作为结论,作者给出了两种方法在一个综合案例上得到的结果
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Restoration of spiky signals: a new optimal estimate and a comparison
Discusses the restoration of spiky sequences distorted by a linear system and corrupted by additive noise. A (now) classical way of coping with this problem is to use a Bayesian approach with a Bernoulli-Gaussian (BG) prior model of the sequence. The authors refine this method using a Bernoulli-Gaussian plus Gaussian (BCG) prior model. This estimation method requires maximization of a posterior probability distribution, which cannot be performed optimally. Thus the authors propose a new non-Bayesian estimation scheme, derived from the Kullback-Leibler information or cross-entropy. This quite general method, called the maximum entropy on the mean method (MEMM) in Gamboa (1989) and le Besnerais (1995) is firmly based on convex analysis and yields a unique solution which can be efficiently calculated in practice, and which is, in this sense, truly optimal. As a conclusion, the authors present results obtained with both methods on a synthetic case
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