基于碰撞时间和轨迹预测的智能手机摩托车前方碰撞预警系统

Qun Lim;Yi Lim;Hafiz Muhammad;Dylan Wei Ming Tan;U-Xuan Tan
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引用次数: 4

摘要

目的-本文的目的是为摩托车手开发一种概念验证(POC)前向碰撞警告(FWC)系统,该系统根据碰撞时间和检测到的车辆和自身车辆(摩托车)的轨迹来确定潜在的碰撞。设计/方法论/方法——分为三种方法。首先,基于低成本的摄像机视频输入来计算碰撞时间值。其次,基于2D像素坐标中的视频数据来预测检测到的车辆的轨迹。第三,通过低成本的惯性测量单元传感器,通过摩托车的倾斜方向预测ego车辆的轨迹。调查结果-这包括一个综合的高级FWC系统,它是上述三种方法的融合。首先,为了预测碰撞时间,使用嵌套卡尔曼滤波器和车辆检测将图像像素矩阵转换为相对距离、速度和碰撞时间数据。接下来,对于检测到的车辆的轨迹预测,比较了几种算法,发现长短期记忆在数据集上表现最好。最后的发现是,为了确定ego车辆的倾斜方向,与骑行模式分类相比,使用倾斜角度测量更好。独创性/价值-本文的价值在于,它提供了一个POC FWC系统,该系统考虑了碰撞时间和被检测车辆(摩托车)的轨迹。
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Forward collision warning system for motorcyclist using smart phone sensors based on time-to-collision and trajectory prediction
Purpose - The purpose of this paper is to develop a proof-of-concept (POC) Forward Collision Warning (FWC) system for the motorcyclist, which determines a potential clash based on time-to-collision and trajectory of both the detected and ego vehicle (motorcycle). Design/methodology/approach - This comes in three approaches. First, time-to-collision value is to be calculated based on low-cost camera video input. Second, the trajectory of the detected vehicle is predicted based on video data in the 2 D pixel coordinate. Third, the trajectory of the ego vehicle is predicted via the lean direction of the motorcycle from a low-cost inertial measurement unit sensor. Findings - This encompasses a comprehensive Advanced FWC system which is an amalgamation of the three approaches mentioned above. First, to predict time-to-collision, nested Kalman filter and vehicle detection is used to convert image pixel matrix to relative distance, velocity and time-to-collision data. Next, for trajectory prediction of detected vehicles, a few algorithms were compared, and it was found that long short-term memory performs the best on the data set. The last finding is that to determine the leaning direction of the ego vehicle, it is better to use lean angle measurement compared to riding pattern classification. Originality/value - The value of this paper is that it provides a POC FWC system that considers time-to-collision and trajectory of both detected and ego vehicle (motorcycle).
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Front Cover Contents Advancements and Prospects in Multisensor Fusion for Autonomous Driving Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation Decision Making and Control of Autonomous Vehicles Under the Condition of Front Vehicle Sideslip
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