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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Multiple Sensor Fusion and Classification for Moving Object Detection and Tracking
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Multiple Sensor Fusion and Classification for Moving Object Detection and Tracking

机译:多传感器融合和分类,用于运动物体检测和跟踪

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摘要

The accurate detection and classification of moving objects is a critical aspect of advanced driver assistance systems. We believe that by including the object classification from multiple sensor detections as a key component of the object's representation and the perception process, we can improve the perceived model of the environment. First, we define a composite object representation to include class information in the core object's description. Second, we propose a complete perception fusion architecture based on the evidential framework to solve the detection and tracking of moving objects problem by integrating the composite representation and uncertainty management. Finally, we integrate our fusion approach in a real-time application inside a vehicle demonstrator from the IP European project, which includes three main sensors: radar, lidar, and camera. We test our fusion approach using real data from different driving scenarios and focusing on four objects of interest: pedestrian, bike, car, and truck.
机译:精确检测和分类运动物体是高级驾驶员辅助系统的关键方面。我们相信,通过将来自多个传感器检测的对象分类作为对象表示和感知过程的关键组成部分,我们可以改善环境的感知模型。首先,我们定义一个复合对象表示形式,以在核心对象的描述中包括类信息。其次,我们提出了一种基于证据框架的完整感知融合架构,通过集成复合表示和不确定性管理解决运动物体检测和跟踪问题。最后,我们将融合方法集成到IP欧洲项目的车辆演示器中的实时应用程序中,该演示器包括三个主要传感器:雷达,激光雷达和摄像头。我们使用来自不同驾驶场景的真实数据并关注四个感兴趣的对象(行人,自行车,汽车和卡车)测试我们的融合方法。

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