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Data fusion on a distributed heterogeneous sensor network

机译:分布式异构传感器网络上的数据融合

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摘要

Alarm-based sensor systems are being explored as a tool to expand perimeter security for facilities and force protection. However, the collection of increased sensor data has resulted in an insufficient solution that includes faulty data points. Data analysis is needed to reduce nuisance and false alarms, which will improve officials' decision making and confidence levels in the system's alarms. Moreover, operational costs can be allayed and losses mitigated if authorities are alerted only when a real threat is detected. In the current system, heuristics such as persistence of alarm and type of sensor that detected an event are used to guide officials' responses. We hypothesize that fusing data from heterogeneous sensors in the sensor field can provide more complete situational awareness than looking at individual sensor data. We propose a two stage approach to reduce false alarms. First, we use self organizing maps to cluster sensors based on global positioning coordinates and then train classifiers on the within cluster data to obtain a local view of the event. Next, we train a classifier on the local results to compute a global solution. We investigate the use of machine learning techniques, such as k-nearest neighbor, neural networks, and support vector machines to improve alarm accuracy. On simulated sensor data, the proposed approach identifies false alarms with greater accuracy than a weighted voting algorithm.
机译:基于警报的传感器系统正在被探索为一种扩展边界安全性的工具,以用于设施和部队保护。但是,增加的传感器数据的收集导致解决方案不足,其中包括错误的数据点。需要进行数据分析以减少滋扰和虚假警报,这将改善官员的决策制定和对系统警报的置信度。此外,如果仅在检测到实际威胁时才向当局发出警报,则可以减少运营成本并减轻损失。在当前系统中,诸如警报持续性和检测到事件的传感器类型之类的试探法可用于指导官员的反应。我们假设融合传感器领域中来自异构传感器的数据可以比查看单个传感器数据提供更完整的态势感知。我们提出了一种两阶段的方法来减少误报。首先,我们使用自组织图根据全局定位坐标对传感器进行聚类,然后在聚类数据内训练分类器以获得事件的本地视图。接下来,我们在局部结果上训练分类器以计算全局解决方案。我们研究了机器学习技术的使用,例如k最近邻,神经网络和支持向量机,以提高警报的准确性。在模拟的传感器数据上,与加权投票算法相比,所提出的方法识别误报的准确性更高。

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