首页> 外文期刊>Fortschritt-Berichte VDI, Reihe 12. Verkehrstechnik-Fahrzeugtechnik >Object-Level Fusion for Surround Environment Perception in Automated Driving Applications
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Object-Level Fusion for Surround Environment Perception in Automated Driving Applications

机译:用于自动驾驶应用中环绕环境感知的对象级融合

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Driver assistance systems have increasingly relied on more sensors for new functions. As advanced driver assistance system continue to improve towards automated driving, new methods are required for processing the data in an efficient and economical manner from the sensors for such complex systems. The detection of dynamic objects is one of the most important aspects required by advanced driver assistance systems and automated driving. In this thesis, an environment model approach for the detection of dynamic objects is presented in order to realize an effective method for sensor data fusion. A scalable high-level fusion architecture is developed for fusing object data from several sensors in a single system, where processing occurs in three levels: sensor, fusion and application. A complete and consistent object model which includes the object's dynamic state, existence probability and classification is defined as a sensor-independent and generic interface for sensor data fusion across all three processing levels. Novel algorithms are developed for object data association and fusion at the fusion-level of the architecture. An asynchronous sensor-to-global fusion strategy is applied in order to process sensor data immediately within the high-level fusion architecture, giving driver assistance systems the most up-to-date information about the vehicle's environment. Track-to-track fusion algorithms are uniquely applied for dynamic state fusion, where the information matrix fusion algorithm produces results comparable to a low-level central Kalman filter approach. The existence probability of an object is fused using a novel approach based on the Dempster-Shafer evidence theory, where the individual sensor's existence estimation performance is considered during the fusion process. A similar novel approach with the Dempster-Shafer evidence theory is also applied to the fusion of an object's classification. The developed high-level sensor data fusion architecture and its algorithms are evaluated using a prototype vehicle equipped with 12 sensors for surround environment perception. A thorough evaluation of the complete object model is performed on a closed test track using vehicles equipped with hardware for generating an accurate ground truth. Existence and classification performance is evaluated using labeled data sets from real traffic scenarios. The evaluation demonstrates the accuracy and effectiveness of the proposed sensor data fusion approach. The work presented in this thesis has additionally been extensively used in several research projects as the dynamic object detection platform for automated driving applications on highways in real traffic.
机译:驾驶员辅助系统越来越依赖于新功能的更多传感器。随着先进的驾驶员辅助系统继续改进自动驾驶,需要从传感器为这种复杂系统的传感器处理数据以便以有效且经济的方式处理数据。动态对象的检测是高级驾驶员辅助系统和自动驾驶所需的最重要方面之一。在本文中,提出了一种用于检测动态对象的环境模型方法,以实现传感器数据融合的有效方法。开发可扩展的高级融合架构,用于从单个系统中的几个传感器融合对象数据,其中在三个级别发生处理:传感器,融合和应用。一个完整且一致的对象模型,包括对象的动态状态,存在概率和分类被定义为跨所有三个处理级别的传感器数据融合的传感器无关和通用接口。开发了新颖的算法,用于对象数据关联和融合在架构的融合级别。应用异步传感器到全局融合策略,以便在高级融合架构内立即处理传感器数据,为驾驶员辅助系统提供有关车辆环境的最新信息。跟踪跟踪融合算法唯一应用于动态状态融合,其中信息矩阵融合算法产生与低级中央卡尔曼滤波器方法相当的结果。对象的存在概率使用基于Dempster-Shafer证据理论的新方法融合,其中在融合过程中考虑了各个传感器的存在估计性能。与Dempster-Shafer证据理论的类似新颖方法也适用于对象分类的融合。使用配备有12个传感器的原型车辆来评估开发的高电平传感器数据融合架构及其算法,用于环绕环境感知。使用配备有硬件的封闭式测试轨道来执行完整对象模型的全面评估,用于产生准确的地面真理。使用来自真实流量方案的标记数据集进行评估存在和分类性能。评估展示了所提出的传感器数据融合方法的准确性和有效性。本文介绍的工作另外,在几个研究项目中广泛使用作为实际交通高速公路上自动化驾驶应用的动态对象检测平台。

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