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Vehicle Trajectory Prediction based on Social Generative Adversarial Network for Self-Driving Car Applications

机译:基于社会生成对抗网络自动驾驶汽车应用的车辆轨迹预测

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Self-driving or autonomous vehicles need to efficiently and continuously navigate in complex traffic environments by analyzing the surrounding scene, understanding the behavior of other traffic-agents, and predicting their future trajectories. The main goal is to plan a safe motion and reduce the reaction time for possibly imminent hazards. A critical and challenging problem considered in this paper is to explore the movement patterns of surrounding traffic-agents and accurately predict their future trajectories for helping the vehicle make reasonable decision. To solve the problem, a deep learning-based framework is proposed in this paper for predicting trajectories of autonomous vehicles. The key is to train a social GAN (generative adversarial network) deep model for prediction of vehicle trajectory. The presented experimental results have verified that the proposed social GAN-based approach outperforms the traditional Social LSTM (long short-term memory)-based method.
机译:通过分析周围的场景,了解其他交通代理的行为,并预测其未来轨迹的自动驾驶或自主车辆需要有效地和不断地在复杂的交通环境中进行高效和不断导航。主要目标是规划安全运动,减少可能迫在眉睫的危害的反应时间。本文考虑的一个关键和具有挑战性的问题是探讨周围的交通代理的运动模式,并准确地预测其未来的轨迹,以帮助车辆做出合理的决定。为了解决这个问题,本文提出了一种基于深入的学习框架,用于预测自动车辆的轨迹。关键是训练一个社交GaN(生成的对抗网络)深度模型以预测车辆轨迹。呈现的实验结果已经证实,基于社会GAN的方法优于传统的社会LSTM(长短短期记忆)的方法。

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