Autonomous vehicles currently suffer from a time-inefficient driving style caused by uncertainty about human behavior in traffic interactions. Accurate and reliable prediction models enabling more efficient trajectory planning could make autonomous vehicles more assertive in such interactions. However, the evaluation of such models is commonly oversimplistic, ignoring the asymmetric importance of prediction errors and the heterogeneity of the datasets used for testing. We examine the potential of recasting interactions between vehicles as gap acceptance scenarios and evaluating models in this structured environment. To that end, we develop a framework facilitating the evaluation of any model, by any metric, and in any scenario. We then apply this framework to state-of-the-art prediction models, which all show themselves to be unreliable in the most safety-critical situations.
翻译:目前,由于交通往来中人类行为的不确定性,自主车辆的驾驶风格缺乏时间效率,因此,交通往来中的人类行为具有不确定性,因此,准确和可靠的预测模型使得能够进行更高效的轨迹规划的自主车辆在这种互动中更加自信,然而,对此类模型的评价通常过于简单,忽视了预测错误的不对称重要性和用于测试的数据集的不均匀性。我们研究车辆之间作为接受差距的情景重新塑造互动的可能性,并在此结构化环境中评价模型。为此,我们制定了一个框架,便利以任何尺度和任何假设方式评价任何模型。然后,我们将这一框架应用于最先进的预测模型,这些模型在最安全危急的情况下都显示不可靠。