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Iterative Non-negative Deconvolution Algorithms with Alpha-Divergence

机译:具有α分歧的迭代非负解卷积算法

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This paper presents a class of iterative deconvolution algorithms based on Amari's alpha-divergence in the condition of non-negativity constraints. The alpha-divergence is actually a family of divergences indexed by alpha is real number that can measure the discrepancy between two distributions or nonnegative sequences. We consider it to model the difference between the deblurred image and its estimate. By iterative minimization, a general update rule is derived by constructing a surrogate function. The well-known Richardson-Lucy (RL) algorithm arises as a special case of our method. The proposed algorithms monotonically decrease the cost functions and automatically meet the non-negativity constraints. The experiments were performed on both simulated and real medical images to investigate the interesting and useful behavior of the algorithms when different parameters (alpha) were used. The results showed that some chosen ones exhibited much better performance than the RL algorithm.
机译:本文介绍了基于Amari的α-分歧的一类迭代解卷积算法,在非消极性约束条件下。 α-发散实际上是一个由alpha索引的分歧家族是可以测量两个分布或非负序列之间的差异的实数。我们认为它可以模拟去离外图像与其估计之间的差异。通过迭代最小化,通过构造代理函数来导出一般更新规则。众所周知的Richardson-Lucy(RL)算法是我们方法的特殊情况。所提出的算法单调地降低成本函数并自动满足非消极性约束。在模拟和实际医学图像上进行实验,以研究使用不同参数(alpha)时算法的有趣和有用的行为。结果表明,一些所选的结果表现出比R1算法更好的性能。

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