合并驾驶员辅助建议:一种跨模式、成本敏感的方法

Sayanan Sivaraman, M. Trivedi, Mario Tippelhofer, T. Shannon
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引用次数: 26

摘要

在这项研究中,我们提出了新颖的工作,重点是在合并机动中协助驾驶员。我们使用装有传感器的汽车测试平台来监测车辆周围的关键区域。通过融合来自多个传感器模式的信息,我们将测量结果整合到一个与上下文相关的、直观的、通用的表示中,我们称之为动态概率驾驶能力图(DPDM)。我们将驾驶员辅助的DPDM制定为周围环境的紧凑表示,集成了车辆跟踪信息、车道信息、道路几何形状、障碍物检测和自我-车辆动力学。基于对自主车辆动力学、其他车辆和道路环境的强大理解,我们的系统向驾驶员推荐合并机动,将该机动制定为DPDM上的动态规划问题,寻找合并成本最低的解决方案。根据道路、车道和道路上其他车辆的配置,系统建议适当的加速或减速以并入相邻车道,并指定何时以及如何合并。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Merge recommendations for driver assistance: A cross-modal, cost-sensitive approach
In this study, we present novel work focused on assisting the driver during merge maneuvers. We use an automotive testbed instrumented with sensors for monitoring critical regions in the vehicle's surround. Fusing information from multiple sensor modalities, we integrate measurements into a contextually relevant, intuitive, general representation, which we term the Dynamic Probabilistic Drivability Map [DPDM]. We formulate the DPDM for driver assistance as a compact representation of the surround environment, integrating vehicle tracking information, lane information, road geometry, obstacle detection, and ego-vehicle dynamics. Given a robust understanding of the ego-vehicle's dynamics, other vehicles, and the on-road environment, our system recommends merge maneuvers to the driver, formulating the maneuver as a dynamic programming problem over the DPDM, searching for the minimum cost solution for merging. Based on the configuration of the road, lanes, and other vehicles on the road, the system recommends the appropriate acceleration or deceleration for merging into the adjacent lane, specifying when and how to merge.
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