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Joint Prediction for Kinematic Trajectories in Vehicle-Pedestrian-Mixed Scenes

机译:车辆行人混合场景中运动轨迹的联合预测

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Trajectory prediction for objects is challenging and critical for various applications (e.g., autonomous driving, and anomaly detection). Most of the existing methods focus on homogeneous pedestrian trajectories prediction, where pedestrians are treated as particles without size. However, they fall short of handling crowded vehicle-pedestrian-mixed scenes directly since vehicles, limited with kinematics in reality, should be treated as rigid, non-particle objects ideally. In this paper, we tackle this problem using separate LSTMs for heterogeneous vehicles and pedestrians. Specifically, we use an oriented bounding box to represent each vehicle, calculated based on its position and orientation, to denote its kinematic trajectories. We then propose a framework called VP-LSTM to predict the kinematic trajectories of both vehicles and pedestrians simultaneously. In order to evaluate our model, a large dataset containing the trajectories of both vehicles and pedestrians in vehicle-pedestrian-mixed scenes is specially built. Through comparisons between our method with state-of-the-art approaches, we show the effectiveness and advantages of our method on kinematic trajectories prediction in vehicle-pedestrian-mixed scenes.
机译:对物体的轨迹预测是对各种应用(例如,自主驾驶和异常检测)的挑战性和至关重要。大多数现有方法专注于同质的行人轨迹预测,其中行人被视为没有尺寸的颗粒。然而,由于现实的汽车限制,因此,它们缺乏直接操纵拥挤的车辆行人混合场景,应该理想地被视为刚性,非颗粒物体。在本文中,我们使用单独的LSTMS来解决这个问题,用于异构车辆和行人。具体地,我们使用面向定向的边界框来表示每个车辆,基于其位置和方向计算,以表示其运动轨迹。然后,我们提出了一个名为VP-LSTM的框架,以便同时预测两辆车辆和行人的运动轨迹。为了评估我们的模型,专门建造了一个包含车辆行人和行人的车辆轨迹的大型数据集。通过我们的方法与最先进的方法的比较,我们展示了我们对车辆行人混合场景中运动轨迹预测的方法的有效性和优势。

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