We develop a novel human trajectory prediction system that incorporates the scene information (Scene-LSTM) as well as individual pedestrian movement (Pedestrian-LSTM) trained simultaneously within static crowded scenes. We superimpose a two-level grid structure (grid cells and subgrids) on the scene to encode spatial granularity plus common human movements. The Scene-LSTM captures the commonly traveled paths that can be used to significantly influence the accuracy of human trajectory prediction in local areas (i.e. grid cells). We further design scene data filters, consisting of a hard filter and a soft filter, to select the relevant scene information in a local region when necessary and combine it with Pedestrian-LSTM for forecasting a pedestrian's future locations. The experimental results on several publicly available datasets demonstrate that our method outperforms related works and can produce more accurate predicted trajectories in different scene contexts.
翻译:我们开发了一个新的人类轨迹预测系统,其中纳入了现场信息(Scene-LSTM)以及个人行人运动(Pedestrian-LSTM),在静态拥挤的场景中同时进行了培训,我们同时在现场添加了两级网格结构(电网电池和亚电网),以编码空间颗粒度和人类共同运动。Scene-LSTM捕捉了可以用来大大影响当地地区人类轨迹预测准确性的通用行进路径(即电网电池)。我们进一步设计了由硬过滤器和软过滤器组成的现场数据过滤器,以便在必要时选择当地区域的有关场景信息,并与Pedestrian-LSTM相结合,用于预测行人的未来位置。一些公开可得的数据集的实验结果表明,我们的方法优于相关工程,可以在不同场景环境中产生更准确的预测轨迹。