With the progress of the urbanisation process, the urban transportation system is extremely critical to the development of cities and the quality of life of the citizens. Among them, it is one of the most important tasks to judge traffic congestion by analysing the congestion factors. Recently, various traditional and machine-learning-based models have been introduced for predicting traffic congestion. However, these models are either poorly aggregated for massive congestion factors or fail to make accurate predictions for every precise location in large-scale space. To alleviate these problems, a novel end-to-end framework based on convolutional neural networks is proposed in this paper. With learning representations, the framework proposes a novel multimodal fusion module and a novel representation mapping module to achieve traffic congestion predictions on arbitrary query locations on a large-scale map, combined with various global reference information. The proposed framework achieves significant results and efficient inference on real-world large-scale datasets.
翻译:随着城市化进程的进展,城市交通系统对于城市发展和公民生活质量极为重要,其中,通过分析拥堵因素来判断交通堵塞是最重要的任务之一,最近采用了各种传统和机械学习模式来预测交通堵塞,然而,这些模式不是对大规模堵塞因素没有很好地加以汇总,就是未能对大规模空间的每一个确切位置作出准确的预测。为缓解这些问题,本文件提出了一个基于连动神经网络的新颖的端对端框架。在学习介绍中,该框架提出一个新的多式联运聚合模块和一个新的代表制绘图模块,以在大型地图上对任意查询地点进行交通堵塞预测,并结合各种全球参考信息。拟议框架在现实世界大规模数据站上取得了重大成果和有效推断。