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Feature Based ATR Performance Model for FLIR

机译:基于特征的FLIR ATR性能模型

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摘要

A performance model for FLIR automatic target recognition is discussed. Key aspects of this model are that (a) relationships between sensor optical resolution, sampling, noise and estimated P(ID) are implicitly defined, (b) premised on the use of the particular features that are used, the analysis of the matching structure leads to an explicit "shape similarity" measure between targets, (c) the notion of "shape" includes both internal signature attributes and external contour information; (d) the values of this shape measure can be measured for both true and false target models using combined CAD rendering, sensor models, and features, (e) in addition to the P(ID), the system also is able to predict the probability of declaration P(DeclareTarget) for a given true target, (f) the system is able to predict the probability of false declaration for a given confuser or confuser to target similarity specification, (g) M (with M ≥ 2) class problems are able to be handled, and (h) the diagonals along confusion matrices can be estimated directly using this approach. The model relies on analysis of performance of a particular type of shape-based features, with the goal of developing explicit relationships from low level features through high level model matching. Based on the predicted densities of the ensemble of features, the system approximates an expression for the likelihood of the observed features under noisy conditions with a given sensor, conditioned on the target type, aspect, and range. Using some engineering approximations that relate to the distance transform-type method of matching that is analyzed, a tractable form of a non-unique correspondence based approximate likelihood expression is obtained, which can be used to estimate bounds on the performance of similar sensor/ATR systems that rely on these features. Such an approach could also be applied to other phenomenologies, such as synthetic aperture radar, using an appropriate low level model of the extracted features. Predictive models using a CAD based target signature rendering package have been used to generate target signatures. Trade-offs for various combinations of sensor/algorithm design parameters are in principle able to be carried out quickly and easily using this approach.
机译:讨论了用于FLIR自动目标识别的性能模型。该模型的关键方面是(a)隐式定义传感器光学分辨率,采样,噪声和估计的P(ID)之间的关系,(b)以使用的特定功能为前提,对匹配结构进行分析导致目标之间明确的“形状相似性”度量;(c)“形状”的概念既包括内部签名属性,又包括外部轮廓信息; (d)可以使用组合的CAD渲染,传感器模型和特征针对真实和错误目标模型测量此形状度量的值,(e)除P(ID)外,系统还能够预测给定真实目标的声明概率P(DeclareTarget),(f)系统能够预测给定混淆者或混淆者针对目标相似性规范的虚假声明概率,(g)M(M≥2)类问题(h)沿着混淆矩阵的对角线可以使用此方法直接估算。该模型依赖于对特定类型的基于形状的特征的性能进行分析,其目标是从低层特征到高层模型匹配来开发显式关系。基于特征集合的预测密度,系统会根据目标类型,方面和范围,对给定传感器在嘈杂条件下观察到的特征的可能性进行近似表达。使用一些与距离变换类型的匹配方法有关的工程逼近,进行分析,得出基于非唯一对应的近似似然表达式的可处理形式,可用于估算相似传感器/ ATR的性能范围依赖这些功能的系统。使用适当的提取特征的低级模型,这种方法也可以应用于其他现象,例如合成孔径雷达。使用基于CAD的目标签名渲染包的预测模型已用于生成目标签名。原则上,使用这种方法可以快速,轻松地进行传感器/算法设计参数各种组合的权衡。

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