We present a review and taxonomy of 200 models from the literature on driver behavior modeling. We begin by introducing a mathematical framework for describing the dynamics of interactive multi-agent traffic. Based on the partially observable stochastic game, this framework provides a basis for discussing different driver modeling techniques. Our taxonomy is constructed around the core modeling tasks of state estimation, intention estimation, trait estimation, and motion prediction, and also discusses the auxiliary tasks of risk estimation, anomaly detection, behavior imitation and microscopic traffic simulation. Existing driver models are categorized based on the specific tasks they address and key attributes of their approach.
翻译:我们从关于驾驶者行为模型的文献中提出200个模型的审查和分类。我们首先采用一个数学框架来描述互动式多试剂交通的动态。根据部分可见的随机游戏,这个框架为讨论不同的驾驶者模型技术提供了基础。我们的分类围绕国家估计、意图估计、特征估计和运动预测等核心模型任务来构建,并讨论风险估计、异常检测、行为仿照和微镜交通模拟等辅助任务。现有的驾驶员模型根据其处理的具体任务和方法的关键属性进行分类。