基于LSTM网络的滚动角预测动力两轮车轨迹预测

Karl Ludwig Stolle, Anja Wahl, Stephan Schmidt
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摘要

主动安全系统的动力两轮车(PTWs)被认为是一个关键支柱,进一步减少事故的数量,从而受伤的骑手和死亡。需要提高对当前骑行情况的认识,以改善现有系统的性能并启用新系统;这包括检测骑手的意图——骑手为短期未来计划的行动。对即将到来的骑行的连续轨迹的预测是表达骑行者意图的一种方式。我们的工作是通过在接下来的4秒内的滚动角轨迹来预测PTW的横向动态状态。基于长短期记忆(LSTM)层的深度学习(DL)预测模型使用侧重于农村道路环境的广泛的公路骑行数据集进行了优化和训练。预测模型的输入仅是PTW内部信号,即车辆动力学、乘客输入和乘客行为的测量。后两组信号在目前的批量生产ptw中并不常见,并且在收集骑行数据集之前特别添加到我们的测试自行车中。将优化后的深度学习模型的预测性能与在滚转角和位置轨迹域中使用多个度量的简单启发式算法进行了比较。对代表性测试数据集的评估表明,DL模型在所有指标中都显着提高了对骑手意图的检测。在给定模型结构和输入特征的情况下,在转弯时总4 s预测视界中,2-2.5 s的横向轨迹精度达到合理。此外,在烧蚀研究中,研究了特别增加的非常见转向和乘员行为测量信号的特征重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory Forecasting for Powered Two Wheelers by Roll Angle Prediction with an LSTM Network
Active safety systems for powered two wheelers (PTWs) are considered a key pillar to further reduce the number of accidents and thus of injured riders and fatalities. Enhanced awareness for the current riding situation is required to improve the performance of current systems as well as to enable new ones; this includes the detection of the rider’s intention – the action that is planned by the rider for the short-term future. The prediction of a continuous trajectory for the upcoming seconds of the ride is one way to express rider intention. Our work pursues the prediction of the PTW lateral dynamic state by means of a roll angle trajectory over the upcoming 4 s of riding. A deep learning (DL) prediction model that is based on a Long-Short Term Memory (LSTM) layer is optimized and trained for this task using a broad on-road riding dataset that focuses on the rural road environment. Inputs to the prediction model are PTW internal signals only, that are measurements of vehicle dynamics, rider inputs, and rider behavior. The latter two groups of signals are non-common for current series production PTWs and were especially added to our test bike before gathering the riding data set. The prediction performance of the optimized DL model is compared to a simple heuristic algorithm using multiple metrics in the roll angle and position trajectory domain. Evaluation on a representative test data set shows a significantly improved detection of rider intention by the DL model in all metrics. Reasonable lateral trajectory accuracy is achieved for 2-2.5 s of the total 4 s prediction horizon in cornering, given the chosen model architecture and input features. Furthermore, the feature importance of the especially added non-common measurement signals of steering and rider behavior is investigated in an ablation study.
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