There is quickly growing literature on machine-learned models that predict human driving trajectories in road traffic. These models focus their learning on low-dimensional error metrics, for example average distance between model-generated and observed trajectories. Such metrics permit relative comparison of models, but do not provide clearly interpretable information on how close to human behavior the models actually come, for example in terms of higher-level behavior phenomena that are known to be present in human driving. We study highway driving as an example scenario, and introduce metrics to quantitatively demonstrate the presence, in a naturalistic dataset, of two familiar behavioral phenomena: (1) The kinematics-dependent contest, between on-highway and on-ramp vehicles, of who passes the merging point first. (2) Courtesy lane changes away from the outermost lane, to leave space for a merging vehicle. Applying the exact same metrics to the output of a state-of-the-art machine-learned model, we show that the model is capable of reproducing the former phenomenon, but not the latter. We argue that this type of behavioral analysis provides information that is not available from conventional model-fitting metrics, and that it may be useful to analyze (and possibly fit) models also based on these types of behavioral criteria.
翻译:关于预测道路交通中人驾驶轨迹的机学模型的文献迅速增加。这些模型侧重于低维误差测量标准,例如模型产生和观察到的轨迹之间的平均距离。这类测量标准允许对模型进行比较,但不能提供清晰的解释信息,说明模型实际接近人类行为的程度,例如已知人类驾驶中存在的高层次行为现象。我们研究高速驾驶作为例例假,并引入测量尺度,量化地显示在自然数据集中存在两种熟悉的行为现象:(1) 运动学的竞赛,即先通过合并点的在高上和机载车辆之间的平均距离。(2) 优雅的航道变化离最远的航程,为集成车辆留出空间。我们将同样的测量尺度应用于一个先进机学模型的输出,我们证明该模型能够复制前一种现象,而不是后一种。我们说,这一类型的行为分析模式提供了从常规模型中无法获得的信息,从常规模型中也有可能用于分析这些模式。