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Implementation and Evaluation of an Enhanced Intention Prediction Algorithm for Lane-Changing Scenarios on Highway Roads

机译:公路行车路线变更情景的增强意图预测算法的实现与评估

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For an autonomous vehicle driving on a public road, the safety of the passengers and the efficiency of the trip taken are prioritized causing the main function of the autonomous vehicle to be interpreting and inferring the intention of surrounding vehicles, and warning the driver accordingly. Recent Advanced Driving Assistance Systems (ADAS) are capable of and usually limited to, support features like forward-collision warnings, alerting the driver of hazardous road conditions, detecting road markings, and warning the driver if they are changing lanes. However, modern ADAS are still unable to perform basic vehicle-behavior-prediction humans are capable of. In this paper, we introduce and compare the results of two different methodologies, Recurrent Neural Networks (RNN) and Long Short-Term Memory networks (LSTM), for lane-changing intention prediction of surrounding vehicles. For the LSTM model, the F1-score achieved was 0.944 for lane-keeping, 0.781 for left lane-changing, and 0.942 for right lane-changing. The RNN-based model reached an F1-score of 0.704 for lane-keeping, 0.533 for left lane-changing, and 0.714 for right lane-changing. The training process of these data-driven based methodologies can be implemented using sequences of changing centroids of vehicles along with the frames and labeling of the maneuvers introduced by the PREVENTION dataset.
机译:对于在公共道路上行驶的自动驾驶车辆,优先考虑乘客的安全性和出行的效率,从而导致自动驾驶车辆的主要功能得到解释并推断周围车辆的意图,并相应地警告驾驶员。最近的高级驾驶辅助系统(ADAS)能够并且通常仅限于支持一些功能,例如前撞警告,警告驾驶员危险的道路状况,检测道路标记以及在驾驶员改变车道时警告驾驶员。但是,现代ADAS仍无法执行人类具备的基本车辆行为预测能力。在本文中,我们介绍并比较了两种不同方法的结果,即递归神经网络(RNN)和长短期记忆网络(LSTM),用于预测周围车辆的变道意图。对于LSTM模型,保持车道时的F1得分为0.944,改变左车道时为0.781,改变右车道时为0.942。基于RNN的模型在保持车道时的F1得分为0.704,在改变左车道时为0.533,在改变右车道时为0.714。这些基于数据驱动的方法的训练过程可以通过使用改变的车辆质心的序列以及PREVENTION数据集引入的框架和操作标签来实现。

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