Forecasting the behavior of other agents is an integral part of the modern robotic autonomy stack, especially in safety-critical scenarios with human-robot interaction, such as autonomous driving. In turn, there has been a significant amount of interest and research in trajectory forecasting, resulting in a wide variety of approaches. Common to all works, however, is the use of the same few accuracy-based evaluation metrics, e.g., displacement error and log-likelihood. While these metrics are informative, they are task-agnostic and predictions that are evaluated as equal can lead to vastly different outcomes, e.g., in downstream planning and decision making. In this work, we take a step back and critically evaluate current trajectory forecasting metrics, proposing task-aware metrics as a better measure of performance in systems where prediction is being deployed. We additionally present one example of such a metric, incorporating planning-awareness within existing trajectory forecasting metrics.
翻译:预测其他物剂的行为是现代机器人自主堆积的一个有机组成部分,特别是在安全临界情景中,与人类-机器人相互作用,如自主驾驶等。反过来,轨迹预测引起了大量的兴趣和研究,从而产生了各种各样的办法。然而,所有工作的共同之处是使用同样的少数基于准确性的评价指标,例如流离失所错误和日志相似性。虽然这些指标信息丰富,但它们是任务不可知性和被评价为同等的预测,可导致巨大不同的结果,例如在下游规划和决策方面。在这项工作中,我们退一步,严格评价目前的轨迹预测指标,提出任务可觉察度指标,以更好地衡量正在部署预测的系统的业绩。我们又举了这样一个指标的例子,将规划意识纳入现有的轨迹预测指标中。