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Implementation and testing of a sensor-netting algorithm for early warning and high confidence C/B threat detection

机译:用于预警和高置信度C / B威胁检测的传感器联网算法的实现和测试

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Large networks of disparate chemical/biological (C/B) sensors, MET sensors, and intelligence, surveillance, and reconnaissance (ISR) sensors reporting to various command/display locations can lead to conflicting threat information, questions of alarm confidence, and a confused situational awareness. Sensor netting algorithms (SNA) are being developed to resolve these conflicts and to report high confidence consensus threat map data products on a common operating picture (COP) display. A data fusion algorithm design was completed in a Phase I SBIR effort and development continues in the Phase II SBIR effort. The initial implementation and testing of the algorithm has produced some performance results. The algorithm accepts point and/or standoff sensor data, and event detection data (e.g., the location of an explosion) from various ISR sensors (e.g., acoustic, infrared cameras, etc.). These input data are preprocessed to assign estimated uncertainty to each incoming piece of data. The data are then sent to a weighted tomography process to obtain a consensus threat map, including estimated threat concentration level uncertainty. The threat map is then tested for consistency and the overall confidence for the map result is estimated. The map and confidence results are displayed on a COP. The benefits of a modular implementation of the algorithm and comparisons of fused / un-fused data results will be presented. The metrics for judging the sensor-netting algorithm performance are warning time, threat map accuracy (as compared to ground truth), false alarm rate, and false alarm rate v. reported threat confidence level
机译:大型网络由不同的化学/生物(C / B)传感器,MET传感器以及情报,监视和侦察(ISR)传感器报告给各个命令/显示位置,这可能导致冲突的威胁信息,警报置信度问题以及混乱的情况对情况的意识。正在开发传感器网络算法(SNA),以解决这些冲突并在公共操作图片(COP)显示器上报告高置信度共识威胁图数据产品。数据融合算法设计是在第一阶段SBIR工作中完成的,并且继续在第二阶段SBIR工作中进行开发。该算法的初始实现和测试产生了一些性能结果。该算法从各种ISR传感器(例如,声学,红外摄像机等)接收点和/或对峙传感器数据以及事件检测数据(例如,爆炸的位置)。对这些输入数据进行预处理,以将估计的不确定性分配给每个传入的数据。然后将数据发送到加权层析成像过程中,以获得一致的威胁图,包括估计的威胁集中程度不确定性。然后测试威胁图的一致性,并估计该图结果的总体置信度。地图和置信度结果显示在COP上。将介绍算法的模块化实现以及融合/未融合数据结果的比较的好处。判断传感器联网算法性能的指标是警告时间,威胁图准确性(与地面真实情况相比),错误警报率和错误警报率与报告的威胁置信度

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