High fidelity behavior prediction of human drivers is crucial for efficient and safe deployment of autonomous vehicles, which is challenging due to the stochasticity, heterogeneity, and time-varying nature of human behaviors. On one hand, the trained prediction model can only capture the motion pattern in an average sense, while the nuances among individuals can hardly be reflected. On the other hand, the prediction model trained on the training set may not generalize to the testing set which may be in a different scenario or data distribution, resulting in low transferability and generalizability. In this paper, we applied a $\tau$-step modified Extended Kalman Filter parameter adaptation algorithm (MEKF$_\lambda$) to the driving behavior prediction task, which has not been studied before in literature. With the feedback of the observed trajectory, the algorithm is applied to neural-network-based models to improve the performance of driving behavior predictions across different human subjects and scenarios. A new set of metrics is proposed for systematic evaluation of online adaptation performance in reducing the prediction error for different individuals and scenarios. Empirical studies on the best layer in the model and steps of observation to adapt are also provided.
翻译:对人类驾驶员的高度忠诚行为预测对于高效和安全地部署自主车辆至关重要,这具有挑战性,因为人类行为的随机性、异质性和时间变化性。一方面,经过培训的预测模型只能以平均意义捕捉运动模式,而个人之间的细微差别则难以反映。另一方面,经过培训的成套培训的预测模型可能无法概括到可能处于不同情景或数据分布的测试集,从而导致低可转移性和普遍性。在本文中,我们对驱动行为预测任务应用了1美元分步修正的卡尔曼扩展筛选参数调整算法(MEKF$ ⁇ lambda$ ) 。在对观察到的轨迹进行反馈后,该算法将应用于神经网络模型,以改进不同人类主题和情景的驱动行为预测的性能。提出了一套新的衡量标准,用于系统评估在减少不同个人和情景预测错误方面的在线适应性表现。模型中的最佳层和观测步骤也得到了提供。