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A Bayesian approach to identification of gaseous effluents in passive LWIR imagery

机译:一种贝叶斯鉴定被动LWIR图像中的气态流出物的方法

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Typically a regression approach is applied in order to identify the constituents present in a hyperspectral image, and the task of species identification amounts to choosing the best regression model. Common model selection approaches (stepwise and criterion based methods) have well known multiple comparisons problems, and they do not allow the user to control the experimet-wise error rate, or allow the user to include scene-specific knowledge in the inference process. A Bayesian model selection technique called Gibbs Variable Selection (GVS) that better handles these issues is presented and implemented via Markov chain monte carlo (MCMC). GVS can be used to simultaneously conduct inference on the optical path depth and probability of inclusion in a pixel for a each species in a library. This method flexibly accommodates an analyst's prior knowledge of the species present in a scene, as well as mixtures of species of any arbitrary complexity. A series of automated diagnostic measures are developed to monitor convergence of the Markov chains without operator intervention. This method is compared against traditional regression approaches for model selection and results from LWIR data from the Airborne Hyperspectral Imager (AHI) are presented. Finally, the applicability of this identification framework to a variety of scenarios such as persistent surveillance is discussed.
机译:通常,应用回归方法以识别存在于高光谱图像中存在的组成部分,并且物种识别量的任务是选择最佳回归模型。公共模型选择方法(逐步和基于标准的方法)具有众所周知的多个比较问题,并且它们不允许用户控制经验方面的错误率,或者允许用户在推理过程中包括特定场景的知识。一种叫做Gibbs变量选择(GVS)的贝叶斯模型选择技术,可以通过Markov Chain Monte Carlo(MCMC)来呈现和实施更好地处理这些问题的这些问题。 GV可用于同时对图书馆中的每个物种的光路深度和包含在像素的光路深度和包含概率的推断。该方法灵活地容纳分析师的现有知识,其现场存在于场景中的物种,以及任何任意复杂性的物种的混合物。开发了一系列自动诊断措施,以监控Markov链的收敛而不进行操作员干预。将该方法与传统的回归方法进行比较,并提出了来自空中高光谱成像器(AHI)的LWIR数据的结果。最后,讨论了这种识别框架的适用性与诸如持久监测的各种情景。

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