False Detection Filtering Method for Magnetic Sensor-Based Vehicle Detection Systems

Peter Sarcevic, Szilveszter Pletl
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引用次数: 7

Abstract

Magnetometer-based vehicle detection systems offer many advantages compared to other technologies. These systems can effectively detect vehicle presence, but vehicles with high metallic content passing in the neighboring lane can cause false detections. In this work, a new method is proposed for the filtering of these false detections. Filtering is based on different rules constructed using various data types extracted from the signals. All data types were tested separately to find the parameters with most influence, and later these parameters were combined in more complex rules to achieve more accurate results. The optimization of the parameter values was realized using genetic algorithms. The obtained results show that using properly constructed rules, 97% of false detections can be filtered with losing only nearly 0.3 % of good detections, and even a single parameter can be sufficient to reliably filter the false detections.
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基于磁传感器的车辆检测系统的误检滤波方法
与其他技术相比,基于磁力计的车辆检测系统具有许多优点。这些系统可以有效地检测车辆的存在,但在相邻车道上通过的金属含量高的车辆可能会导致错误检测。在这项工作中,提出了一种新的方法来过滤这些假检测。过滤基于使用从信号中提取的各种数据类型构建的不同规则。对所有数据类型分别进行测试,找出影响最大的参数,然后将这些参数组合在更复杂的规则中,以获得更准确的结果。采用遗传算法实现了参数值的优化。结果表明,使用适当构造的规则,可以滤除97%的误检,仅损失近0.3%的好检测,甚至单个参数就足以可靠地滤除误检。
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