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Naval Target Classification by Fusion of Multiple Imaging Sensors Based on the Confusion Matrix

机译:基于混淆矩阵的多种成像传感器融合对海军目标的分类

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摘要

This paper presents an algorithm for the classification of targets based on the fusion of the class information provided by different imaging sensors. The outputs of the different sensors are combined to obtain an accurate estimate of the target class. The performance of each imaging sensor is modelled by means of its confusion matrix (CM), whose elements are the conditional error probabilities in the classification and the conditional correct classification probabilities. These probabilities are used by each sensor to make a decision on the target class. Then, a final decision on the class is made using a suitable fusion rule in order to combine the local decisions provided by the sensors. The overall performance of the classification process is evaluated by means of the "fused" confusion matrix, i.e. the CM pertinent to the final decision on the target class. Two fusion rules are considered: a majority voting (MV) rule and a maximum likelihood (ML) rule. A case study is then presented, where the developed algorithm is applied to three imaging sensors located on a generic air platform: a video camera, an infrared camera (IR), and a spotlight Synthetic Aperture Radar (SAR).
机译:本文提出了一种基于不同成像传感器提供的类别信息融合的目标分类算法。组合不同传感器的输出以获得目标类别的准确估计。每个成像传感器的性能都通过其混淆矩阵(CM)建模,其混淆要素是分类中的条件错误概率和条件正确的分类概率。每个传感器使用这些概率来确定目标类别。然后,使用适当的融合规则做出关于类别的最终决定,以便组合传感器提供的本地决定。分类过程的整体性能通过“融合”混淆矩阵(即与最终确定目标类别有关的CM)进行评估。考虑了两个融合规则:多数投票(MV)规则和最大似然(ML)规则。然后介绍了一个案例研究,其中将开发的算法应用于位于通用空中平台上的三个成像传感器:摄像机,红外摄像机(IR)和聚光合成孔径雷达(SAR)。

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