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Maximum Likelihood Localization of Radioactive Sources Against a Highly Fluctuating Background

机译:高度波动背景下的放射源最大似然定位

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This paper considers the use of maximum likelihood estimation to localize a stationary source from total gamma ray counts, in an open area setting with a highly fluctuating background. As this turns out to be a highly nonconcave maximization, convergence rates of global convergent algorithms, such as simulated annealing, can be very slow and iterative algorithms such an Newton’s method for maximization can be captured by local maxima while fast. Thus, the selection of the initial estimate is critical to how well they perform. This paper proposes a way to generate such an initial estimate using an averaging process that is shown to be asymptotically convergent to the maximum likelihood source estimate. This ensures that with a sufficiently large number of samples, the initial estimate is indeed within of the basin of attraction of such iterative algorithms. Analytical results are supported by numerical simulations based on a measured background data and synthetically injected source data.
机译:本文考虑使用最大似然估计从背景中高度波动的开放区域中,根据总伽马射线计数确定固定源的位置。由于这是高度非凹的最大化,因此全局收敛算法(例如模拟退火)的收敛速度可能非常慢,而诸如牛顿最大化方法的迭代算法可以很快被局部最大值捕获。因此,初始估计的选择对于它们的性能至关重要。本文提出了一种使用平均过程生成这种初始估计的方法,该过程显示为渐近收敛于最大似然源估计。这确保了在有足够数量的样本的情况下,初始估计的确在这种迭代算法的吸引力之内。基于测得的背景数据和合成注入的源数据,通过数值模拟来支持分析结果。

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