Pavement distress detection and avoidance for intelligent vehicles

M. Bellone, G. Reina
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引用次数: 7

Abstract

Pavement distresses and potholes represent road hazards that can cause accidents and damages to vehicles. The latter may vary from a simple flat tyre to serious failures of the suspension system, and in extreme cases to collisions with third-party vehicles and even endanger passengers' lives. The primary scientific aim of this study is to investigate the problem of road hazard detection for driving assistance purposes, towards the final goal of implementing such a technology on future intelligent vehicles. The proposed approach uses a depth sensor to generate an environment representation in terms of 3D point cloud that is then processed by a normal vector-based analysis and presented to the driver in the form of a traversability grid. Even small irregularities of the road surface can be successfully detected. This information can be used either to implement driver warning systems or to generate, using a cost-to-go planning method, optimal trajectories towards safe regions of the carriageway. The effectiveness of this approach is demonstrated on real road data acquired during an experimental campaign. Normal analysis and path generation are performed in post-analysis. This approach has been demonstrated to be promising and may help to drastically reduce fatal traffic casualties, as a high percentage of road accidents are related to pavement distress.
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智能车辆路面损伤检测与避免
路面破损和坑洼是可能导致事故和车辆损坏的道路危险。后者可能从简单的轮胎漏气到悬挂系统的严重故障,在极端情况下与第三方车辆发生碰撞,甚至危及乘客的生命。本研究的主要科学目的是研究以驾驶辅助为目的的道路危险检测问题,最终目标是在未来的智能车辆上实施这种技术。该方法使用深度传感器以3D点云的形式生成环境表示,然后通过基于法向量的分析进行处理,并以可穿越网格的形式呈现给驾驶员。即使是很小的路面凹凸不平也能被成功检测出来。这些信息既可以用于实施驾驶员警告系统,也可以使用成本-走规划方法生成通往车道安全区域的最佳轨迹。在实验过程中获得的真实道路数据证明了该方法的有效性。正常分析和路径生成在后期分析中执行。这种方法已被证明是有希望的,并且可能有助于大幅减少致命的交通伤亡,因为很大比例的道路事故与路面窘迫有关。
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来源期刊
International Journal of Vehicle Autonomous Systems
International Journal of Vehicle Autonomous Systems Engineering-Automotive Engineering
CiteScore
1.30
自引率
0.00%
发文量
0
期刊介绍: The IJVAS provides an international forum and refereed reference in the field of vehicle autonomous systems research and development.
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