Trajectory Prediction Using Video Generation in Autonomous Driving

IF 1.2 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS
David-Traian Iancu, Mihai Nan, S. Ghita, A. Florea
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引用次数: 1

Abstract

: Trajectory prediction for the surrounding cars is a useful task in autonomous driving for obvious reasons. The traditional methods for predicting the future trajectories of surrounding cars involved complex motion models and patterns, complex maneuvers or physical models of the car trajectories. More recent works aim to predict the future car positions by using deep learning and neural networks. In this paper, video generation models were employed, which provide an estimation of the future frames related to the car positions based on an existing video and can obtain the position of the selected cars by employing an object detection algorithm along with additional information obtained by a segmentation module that uses a semantic segmentation network. The results were validated by employing the Root Mean Square Error (RMSE) metric in order to predict the locations of the surrounding cars and estimate their depth. Apparently, this approach has never been implemented in order to obtain the trajectory and the future position of the surrounding cars in autonomous driving.
基于视频生成的自动驾驶轨迹预测
:周围汽车的轨迹预测在自动驾驶中是一项有用的任务,原因很明显。预测周围汽车未来轨迹的传统方法涉及复杂的运动模型和模式、复杂的机动或汽车轨迹的物理模型。最近的工作旨在通过使用深度学习和神经网络来预测未来的汽车位置。在本文中,采用了视频生成模型,该模型基于现有视频提供与汽车位置相关的未来帧的估计,并且可以通过采用对象检测算法以及由使用语义分割网络的分割模块获得的附加信息来获得所选汽车的位置。通过使用均方根误差(RMSE)度量来预测周围汽车的位置并估计其深度,从而验证了结果。显然,这种方法从未被用于获得自动驾驶中周围汽车的轨迹和未来位置。
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来源期刊
Studies in Informatics and Control
Studies in Informatics and Control AUTOMATION & CONTROL SYSTEMS-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
2.70
自引率
25.00%
发文量
34
审稿时长
>12 weeks
期刊介绍: Studies in Informatics and Control journal provides important perspectives on topics relevant to Information Technology, with an emphasis on useful applications in the most important areas of IT. This journal is aimed at advanced practitioners and researchers in the field of IT and welcomes original contributions from scholars and professionals worldwide. SIC is published both in print and online by the National Institute for R&D in Informatics, ICI Bucharest. Abstracts, full text and graphics of all articles in the online version of SIC are identical to the print version of the Journal.
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