Autonomous vehicles use a variety of sensors and machine-learned models to predict the behavior of surrounding road users. Most of the machine-learned models in the literature focus on quantitative error metrics like the root mean square error (RMSE) to learn and report their models' capabilities. This focus on quantitative error metrics tends to ignore the more important behavioral aspect of the models, raising the question of whether these models really predict human-like behavior. Thus, we propose to analyze the output of machine-learned models much like we would analyze human data in conventional behavioral research. We introduce quantitative metrics to demonstrate presence of three different behavioral phenomena in a naturalistic highway driving dataset: 1) The kinematics-dependence of who passes a merging point first 2) Lane change by an on-highway vehicle to accommodate an on-ramp vehicle 3) Lane changes by vehicles on the highway to avoid lead vehicle conflicts. Then, we analyze the behavior of three machine-learned models using the same metrics. Even though the models' RMSE value differed, all the models captured the kinematic-dependent merging behavior but struggled at varying degrees to capture the more nuanced courtesy lane change and highway lane change behavior. Additionally, the collision aversion analysis during lane changes showed that the models struggled to capture the physical aspect of human driving: leaving adequate gap between the vehicles. Thus, our analysis highlighted the inadequacy of simple quantitative metrics and the need to take a broader behavioral perspective when analyzing machine-learned models of human driving predictions.
翻译:自主车辆使用各种传感器和机学模型来预测周围道路使用者的行为。文献中大多数机学模型侧重于根正方差(RMSE)等定量误差指标,以学习和报告模型的能力。这种侧重于定量误差指标往往忽视模型中更重要的行为方面,提出这些模型是否真正预测类似人类的行为的问题。因此,我们提议分析机学模型的输出结果,就像我们在常规行为研究中分析人类数据一样。我们引入量化指标,以显示自然主义高速公路驱动数据集中存在三种不同的行为现象:(1) 最先通过合并点(RMSE)的人的运动主义依赖性;(2) 由高速车辆进行改变,以适应机上车的能力;(3) 高速公路上车辆的改变,以避免车辆冲突。然后,我们用同样的尺度分析三个机学模型的行为。尽管模型的RMSE价值不同,但所有模型都反映了基于运动的合并行为,但以不同程度进行斗争,以捕捉更细致的驱动力分析。