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Deep Learning Based Pedestrian Trajectory Prediction Considering Location Relationship between Pedestrians

机译:考虑行人位置关系的深度学习的行人轨迹预测

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Pedestrian trajectory prediction is a challenging task because of the complex nature of humans. We propose to predict displacement between neighboring frames for each pedestrian sequentially. Specifically, we use an LSTM to model motion information for all pedestrians and use a mlp to map the location of each pedestrian to a high dimensional feature space where the inner product between features is used as a measurement for the positional relationship between two pedestrians. Then we weight the motion features of all pedestrians based on their positional relationship to the target for location displacement prediction. Experiments on publicly available datasets validate the effectiveness of our method for trajectory prediction.
机译:由于人类的复杂性,行人轨迹预测是一个具有挑战性的任务。我们建议顺序地预测每个行人的相邻框架之间的位移。具体地,我们使用LSTM来为所有行人模拟运动信息,并使用MLP将每个行人的位置映射到高维特征空间,其中特征之间的内部产品用作两个行人之间的位置关系的测量。然后,我们将所有行人的运动特征基于其与位置位移预测的目标的位置关系来重量。公开数据集的实验验证了我们对轨迹预测方法的有效性。

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