Optimal Stopping Times for Estimating Bernoulli Parameters with Applications to Active Imaging

Safa C. Medin, John Murray-Bruce, Vivek K Goyal
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引用次数: 4

Abstract

We address the problem of estimating the parameter of a Bernoulli process. This arises in many applications, including photon-efficient active imaging where each illumination period is regarded as a single Bernoulli trial. We introduce a framework within which to minimize the mean-squared error (MSE) subject to an upper bound on the mean number of trials. This optimization has several simple and intuitive properties when the Bernoulli parameter has a beta prior. In addition, by exploiting typical spatial correlation using total variation regularization, we extend the developed framework to a rectangular array of Bernoulli processes representing the pixels in a natural scene. In simulations inspired by realistic active imaging scenarios, we demonstrate a 4.26 dB reduction in MSE due to the adaptive acquisition, as an average over many independent experiments and invariant to a factor of 3.4 variation in trial budget.
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估计伯努利参数的最佳停车时间及其在主动成像中的应用
我们讨论了估计伯努利过程参数的问题。这在许多应用中出现,包括光子高效主动成像,其中每个照明周期被视为单个伯努利试验。我们引入了一个框架,在其中最小化均方误差(MSE)受制于平均试验次数的上界。当伯努利参数具有beta先验时,这种优化具有几个简单直观的性质。此外,通过使用全变分正则化来利用典型的空间相关性,我们将开发的框架扩展到表示自然场景中像素的伯努利过程的矩形阵列。在真实的主动成像场景启发的模拟中,我们证明了由于自适应采集,MSE降低了4.26 dB,这是许多独立实验的平均值,并且不受试验预算3.4变化因子的影响。
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