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Recognition of Lane Change Intentions Fusing Features of Driving Situation, Driver Behavior, and Vehicle Movement by Means of Neural Networks

机译:利用神经网络识别融合驾驶状况,驾驶员行为和车辆运动特征的车道变更意图

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The work presented aims at an early and reliable prediction of lane change maneuvers intended by the driver. For that purpose, an artificial neural network is proposed fusing features modeling the environmental situation that influences the formation of intentions, the gaze behavior of the driver preparing an intended maneuver and the movement of the vehicle. The sensor data required are provided by a multisensor setup comprising automotive radar and camera sensors. The whole prediction algorithm was put into practice as a real-time application and was integrated in a test vehicle. With this system, a naturalistic driving study was conducted on urban roads. The naturalistic driving data obtained were finally used for the parametrization of the algorithm by means of machine learning and for the evaluation of the prediction performance of the algorithm, respectively.
机译:提出的工作旨在尽早,可靠地预测驾驶员意图进行的换道操作。为此,提出了一种人工神经网络,用于融合对环境状况进行建模的特征,这些环境状况会影响意图的形成,驾驶员的视线行为,准备进行预期的操纵以及车辆的运动。所需的传感器数据由包含汽车雷达和摄像头传感器的多传感器设置提供。整个预测算法作为实时应用程序投入实践,并集成在测试车辆中。使用该系统,在城市道路上进行了自然驾驶研究。最后,将获得的自然驾驶数据分别通过机器学习用于算法的参数化和评估算法的预测性能。

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