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Simultaneous object estimation and image reconstruction in a Bayesian setting

机译:贝叶斯环境下的同时目标估计和图像重建

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Abstract: Suppose that it is desired to estimate certain parameters associated with a model of an object that is contained within a larger scene and that only indirect measurements of the scene are available. The optimal solution is provided by a Bayesian approach, which is founded on the posterior probability density distribution. The complete Bayesian procedure requires an integration of the posterior probability over all possible values of the image exterior to the local region being analyzed. In the presented work, the full treatment is approximated by simultaneously estimating the reconstruction outside the local region and the parameters of the model within the local region that maximize the posterior probability. A Monte Carlo procedure is employed to evaluate the usefulness of the technique in a signal-known-exactly detection task in a noisy four-view tomographic reconstruction situation.!
机译:摘要:假设需要估计与包含在较大场景中的对象模型相关联的某些参数,并且仅可对场景进行间接测量。贝叶斯方法提供了最佳解决方案,该方法基于后验概率密度分布。完整的贝叶斯过程需要对被分析局部区域外部图像的所有可能值的后验概率进行积分。在提出的工作中,通过同时估计局部区域外的重建和最大化后验概率的局部区域内模型的参数,可以估算出全部处理量。采用蒙特卡洛程序来评估该技术在嘈杂的四视图层析重建情况下在信号已知的精确检测任务中的有效性。

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