Modern Advanced Driver Assistance Systems (ADAS) are limited in their ability to consider the drivers intention, resulting in unnatural guidance and low customer acceptance. In this research, we focus on a novel data-driven approach to predict driver steering torque. In particular, driver behavior is modeled by learning the parameters of a Hidden Markov Model (HMM) and estimation is performed with Gaussian Mixture Regression (GMR). An extensive parameter selection framework enables us to objectively select the model hyper-parameters and prevents overfitting. The final model behavior is optimized with a cost function balancing between accuracy and smoothness. Naturalistic driving data covering seven participants is obtained using a static driving simulator at Toyota Motor Europe for the training, evaluation, and testing of the proposed model. The results demonstrate that our approach achieved a 92% steering torque accuracy with a 37% increase in signal smoothness and 90% fewer data compared to a baseline. In addition, our model captures the complex and nonlinear human behavior and inter-driver variability from novice to expert drivers, showing an interesting potential to become a steering performance predictor in future user-oriented ADAS.
翻译:现代高级驾驶协助系统(ADAS)在考虑驾驶者意图的能力方面受到限制,导致不自然的指导和低客户接受率。在这项研究中,我们侧重于一种新的数据驱动方法,以预测驾驶员驾驶器转动器。特别是,驾驶员行为模型通过学习隐藏马可夫模型(HMM)的参数进行模型化,用高山混合回归(GMR)进行估算。广泛的参数选择框架使我们能够客观地选择模型超参数,防止过度配置。最后模型行为得到优化,在准确性和平稳性之间实现成本平衡。在丰田汽车欧洲使用静态驾驶模拟器对7名参加者进行自然驾驶数据,用于培训、评价和测试拟议模型。结果显示,我们的方法实现了92%的驾驶员驾驶器精确度,信号光滑度提高了37%,与基线相比,数据减少了90%。此外,我们的模型从无线到专家驾驶员都捕捉了复杂和非线人类行为以及河际变化,显示了成为未来面向用户的ADAS中方向性预测器的引力的有趣潜力。