Several intelligent transportation systems focus on studying the various driver behaviors for numerous objectives. This includes the ability to analyze driver actions, sensitivity, distraction, and response time. As the data collection is one of the major concerns for learning and validating different driving situations, we present a driver behavior switching model validated by a low-cost data collection solution using smartphones. The proposed model is validated using a real dataset to predict the driver behavior in short duration periods. A literature survey on motion detection (specifically driving behavior detection using smartphones) is presented. Multiple Markov Switching Variable Auto-Regression (MSVAR) models are implemented to achieve a sophisticated fitting with the collected driver behavior data. This yields more accurate predictions not only for driver behavior but also for the entire driving situation. The performance of the presented models together with a suitable model selection criteria is also presented. The proposed driver behavior prediction framework can potentially be used in accident prediction and driver safety systems.
翻译:若干智能运输系统侧重于为众多目标研究各种驱动力行为。 这包括分析驱动器动作、敏感性、分散注意力和反应时间的能力。由于数据收集是学习和验证不同驾驶情况的主要关切之一,我们提出了一个驱动器行为转换模型,该模型由使用智能手机的低成本数据收集解决方案加以验证;拟议模型使用真实数据集验证,以预测短期驱动器行为;介绍了关于运动探测的文献调查(具体而言,使用智能手机进行驱动行为探测);实施了多马克夫转换变动自动反射模型,以与所收集的驱动器行为数据实现精密的匹配;不仅为驱动器行为,而且为整个驾驶器情况提供了更准确的预测;还介绍了所展示模型的性能以及适当的模型选择标准;拟议的驱动器行为预测框架有可能用于事故预测和驱动器安全系统。