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360 Multisensor Object Fusion and Sensor-based Erroneous Data Management for Autonomous Vehicles

机译:自动驾驶汽车的360多传感器对象融合和基于传感器的错误数据管理

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In the field of autonomous vehicle, in order to raise the road safety, multiple sensor technologies are mounted with varying levels of maturity. Multisensor data fusion is the process of combining observations from different sources to provide a robust and complete description of an environment and to overcome the limitation in term of availability (compared with one sensor), robustness and quality. Management of erroneous and incomplete information is an important requirement for perception systems. A robust and scalable 360° multisensor fusion framework for static and dynamic obstacles in conjunction with a sensor-based erroneous management block is proposed. The real time quality-based process considers the intra-sensor coherence and source antecedents to deal with the false positive in order to avert unwanted breaking or undesirable longitudinal control behaviours. Our framework is directly integrated on autonomous VALEO and OEM Customers democars. The evaluation is made using real data from different driving scenarios and proved its efficiency and robustness.
机译:在自动驾驶汽车领域,为了提高道路安全性,安装了具有不同成熟度的多种传感器技术。多传感器数据融合是将来自不同来源的观测结果进行组合以提供对环境的鲁棒和完整描述并克服可用性(与一个传感器相比),鲁棒性和质量方面的限制的过程。错误和不完整信息的管理是感知系统的重要要求。提出了一种针对静态和动态障碍物的健壮且可扩展的360°多传感器融合框架,并结合了基于传感器的错误管理模块。基于实时质量的过程考虑了传感器内的相干性和源先因来处理误报,从而避免不必要的破坏或不希望的纵向控制行为。我们的框架直接集成在自动VALEO和OEM客户演示车上。评估是使用来自不同驾驶场景的真实数据进行的,并证明了其效率和稳定性。

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