Forecasting pedestrian trajectories in dynamic scenes remains a critical problem in various applications, such as autonomous driving and socially aware robots. Such forecasting is challenging due to human-human and human-object interactions and future uncertainties caused by human randomness. Generative model-based methods handle future uncertainties by sampling a latent variable. However, few studies explored the generation of the latent variable. In this work, we propose the Trajectory Predictor with Pseudo Oracle (TPPO), which is a generative model-based trajectory predictor. The first pseudo oracle is pedestrians' moving directions, and the second one is the latent variable estimated from ground truth trajectories. A social attention module is used to aggregate neighbors' interactions based on the correlation between pedestrians' moving directions and future trajectories. This correlation is inspired by the fact that pedestrians' future trajectories are often influenced by pedestrians in front. A latent variable predictor is proposed to estimate latent variable distributions from observed and ground-truth trajectories. Moreover, the gap between these two distributions is minimized during training. Therefore, the latent variable predictor can estimate the latent variable from observed trajectories to approximate that estimated from ground-truth trajectories. We compare the performance of TPPO with related methods on several public datasets. Results demonstrate that TPPO outperforms state-of-the-art methods with low average and final displacement errors. The ablation study shows that the prediction performance will not dramatically decrease as sampling times decline during tests.
翻译:在动态场景中预测行人轨迹仍然是各种应用中的一个关键问题,例如自主驾驶和社会认知机器人。这种预测之所以具有挑战性,是因为人与人和人体物体的相互作用以及人类随机性引起的未来不确定性。基于模型的生成方法通过取样潜伏变量来处理未来的不确定性。然而,很少有研究探索潜在变量的生成。在这项工作中,我们提议使用Pseedo Oracle(TPPO)来预测行人轨迹预测仪(TPPO),这是一个基于发基因模型的轨迹预测。第一个假的假的是一个行人运动方向,第二个是地面真理轨迹的潜伏变量估计。根据行人移动方向与未来轨迹的相互关系,使用社会关注模块来汇总邻居的相互作用。这个关联源于行人未来轨迹往往受到前面行人的影响。一个潜在的变量预测器,用来估计行人行人行人移动轨迹的低位变量分布,第二个假的轨迹是行人移动方向,第二个是地面轨迹的移动方向。此外,这两种分布之间的差距在地面轨迹分析期间,我们所观测到的轨迹预测结果的轨迹预测显示,从可变变式预测结果,从可变式的轨迹,从可变式估算中,从可变式估算到的轨迹的轨迹,从可变式的轨迹的轨迹,从可变式的轨迹的轨迹,从可变式预测显示将显示显示,从可测到到到到到的轨迹。