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A Unified Framework for Performance Analysis of Bayesian Inference

机译:贝叶斯推论效果分析统一框架

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摘要

Many problems in image analysis and ATR can be formulated as Bayesian decision theory. We demonstrate that existing work on image analysis and ATR performance can be summarized in terms of these concepts. This includes performance measures such as signal-to-noise ratios, Cramer-Rao lower bounds, Hibert-Schmidth bounds, and ROC curves. Secondly, we describe how phase transitions can occur for taget detection problems so that at critical values of the order parameters it becomes impossible to detect the target. We also analyze the case where the inference process uses weaker prior knowledge to detect the target and quantify in what situations this strategy is effective.
机译:图像分析和ATR中的许多问题都可以制定为贝叶斯决策理论。我们证明现有的图像分析和ATR性能的工作可以在这些概念方面概括。这包括诸如信噪比比,Cramer-Rao下限,Hibert-Schmidth边界和ROC曲线等性能措施。其次,我们描述了Taget检测问题可能如何发生阶段转换,以便在订单参数的临界值处变得不可能检测到目标。我们还分析了推理过程使用较弱的先验知识来检测目标并量化在这种策略是有效的。

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