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首页> 外文期刊>IEEE Transactions on Nuclear Science >Automatic image analysis for detecting and quantifying gamma-ray sources in coded-aperture images
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Automatic image analysis for detecting and quantifying gamma-ray sources in coded-aperture images

机译:自动图像分析,用于检测和量化编码孔径图像中的伽玛射线源

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摘要

We report the development of an automatic image analysis system that detects gamma-ray source regions in images obtained from a coded aperture, gamma-ray imager. The number of gamma sources in the image is not known prior to analysis. The system counts the number (K) of gamma sources detected in the image and estimates the lower bound for the probability that the number of sources in the image is K. The system consists of a two-stage pattern classification scheme in which the probabilistic neural network is used in the supervised learning mode. The algorithms were developed and tested using real gamma-ray images from controlled experiments in which the number and location of depleted uranium source disks in the scene are known. The novelty of the work lies in the creative combination of algorithms and the successful application of the algorithms to real images of gamma-ray sources.
机译:我们报告了一种自动图像分析系统的开发,该系统可检测从编码孔径的伽马射线成像仪获得的图像中的伽马射线源区域。在分析之前,图像中的伽马源数量是未知的。系统对图像中检测到的伽玛源数(K)进行计数,并估计图像中源数为K的概率的下限。系统由两阶段模式分类方案组成,其中概率神经网络网络用于监督学习模式。这些算法是使用来自受控实验的真实伽马射线图像开发和测试的,其中已知场景中贫铀源盘的数量和位置。这项工作的新颖性在于算法的创造性结合以及算法在伽马射线源真实图像中的成功应用。

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