使用NVESD传感器融合试验台的车辆检测方法

P. Perconti, J. Hilger, M. Loew
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引用次数: 4

摘要

美国陆军RDECOM CERDEC夜视和电子传感器理事会(NVESD)在传感器融合方面有一个动态的应用研究计划,用于各种国防和国防相关应用。本文重点介绍了在NVESD传感器融合试验台(SFTB)下,基于图像和声学传感器网络的移动车辆检测领域所做的工作。设计并使用多种车辆进行传感器数据收集。来自该集合的数据包括车辆的特征数据以及移动场景。用于检测和分类的传感器融合在传感器级和特征级执行,为在期望的性能和所需的资源之间进行权衡提供了基础。研究了几种分类器类型(参数、非参数、学习)。他们的决定的组合被用来做出最终的决定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle detection approaches using the NVESD Sensor Fusion Testbed
The US Army RDECOM CERDEC Night Vision & Electronic Sensors Directorate (NVESD) has a dynamic applied research program in sensor fusion for a wide variety of defense & defense related applications. This paper highlights efforts under the NVESD Sensor Fusion Testbed (SFTB) in the area of detection of moving vehicles with a network of image and acoustic sensors. A sensor data collection was designed and conducted using a variety of vehicles. Data from this collection included signature data of the vehicles as well as moving scenarios. Sensor fusion for detection and classification is performed at both the sensor level and the feature level, providing a basis for making tradeoffs between performance desired and resources required. Several classifier types are examined (parametric, nonparametric, learning). The combination of their decisions is used to make the final decision.
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