从Agent轨迹中提取机动

Julian Schmidt, Julian Jordan, D. Raba, Tobias Welz, K. Dietmayer
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引用次数: 2

摘要

基于学习的轨迹预测的进步是由大规模数据集实现的。然而,对这些数据集的深入分析是有限的。此外,预测模型的评估仅限于数据集中所有样本的平均指标。我们提出了一种自动化的方法,允许从这些数据集中的智能体轨迹中提取机动(例如,左转,变道)。该方法考虑了智能体动态信息和智能体行驶的车道段信息。虽然可以将结果机动用于训练分类网络,但我们示例地将它们用于广泛的轨迹数据集分析和多个最先进的轨迹预测模型的机动特定评估。此外,还对数据集进行了分析,并对基于智能体动力学的预测模型进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MEAT: Maneuver Extraction from Agent Trajectories
Advances in learning-based trajectory prediction are enabled by large-scale datasets. However, in-depth analysis of such datasets is limited. Moreover, the evaluation of prediction models is limited to metrics averaged over all samples in the dataset. We propose an automated methodology that allows to extract maneuvers (e.g., left turn, lane change) from agent trajectories in such datasets. The methodology considers information about the agent dynamics and information about the lane segments the agent traveled along. Although it is possible to use the resulting maneuvers for training classification networks, we exemplary use them for extensive trajectory dataset analysis and maneuver-specific evaluation of multiple state-of-the-art trajectory prediction models. Additionally, an analysis of the datasets and an evaluation of the prediction models based on the agent dynamics is provided.
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