The IARAI competition Traffic4cast 2021 aims to predict short-term city-wide high-resolution traffic states given the static and dynamic traffic information obtained previously. The aim is to build a machine learning model for predicting the normalized average traffic speed and flow of the subregions of multiple large-scale cities using historical data points. The model is supposed to be generic, in a way that it can be applied to new cities. By considering spatiotemporal feature learning and modeling efficiency, we explore 3DResNet and Sparse-UNet approaches for the tasks in this competition. The 3DResNet based models use 3D convolution to learn the spatiotemporal features and apply sequential convolutional layers to enhance the temporal relationship of the outputs. The Sparse-UNet model uses sparse convolutions as the backbone for spatiotemporal feature learning. Since the latter algorithm mainly focuses on non-zero data points of the inputs, it dramatically reduces the computation time, while maintaining a competitive accuracy. Our results show that both of the proposed models achieve much better performance than the baseline algorithms. The codes and pretrained models are available at https://github.com/resuly/Traffic4Cast-2021.
翻译:根据以前获得的静态和动态交通信息,IARAI Company Communication Communication Communications Flatter4cast 2021 旨在预测全市高分辨率交通状况的短期高清晰度交通状态,目的是建立一个机器学习模型,利用历史数据点预测多个大型城市次区域正常平均交通速度和流量。该模型应该具有通用性,可以适用于新城市。通过考虑空间特征学习和模型效率,我们探索3DresNet和Sparse-UNet 方法来应对本次竞争中的任务。基于 3DD Net 的模型使用3D Convolution 来学习空间时空特性,并应用相继变相层来增强产出的时间关系。 Sprass-UNet 模型将零星变化用作空间时空特征学习的支柱。由于后一种算法主要侧重于投入的非零数据点,因此大大缩短了计算时间,同时保持有竞争力的准确性。我们的结果显示,这两个拟议模型的性能比基线算法要好得多。 代码和预设模型可在 https://gith- 20Affrusub.comb.commex.