학술논문

Spatial-Temporal Contrasting for Fine-Grained Urban Flow Inference
Document Type
Periodical
Source
IEEE Transactions on Big Data IEEE Trans. Big Data Big Data, IEEE Transactions on. 9(6):1711-1725 Dec, 2023
Subject
Computing and Processing
Task analysis
Data models
Computational modeling
Big Data
Transportation
Superresolution
Fans
Contrastive learning
traffic management
urban computing
urban flow inference
Language
ISSN
2332-7790
2372-2096
Abstract
Fine-grained urban flow inference (FUFI) problem aims to infer the fine-grained flow maps from coarse-grained ones, benefiting various smart-city applications by reducing electricity, maintenance, and operation costs. Existing models use techniques from image super-resolution and achieve good performance in FUFI. However, they often rely on supervised learning with a large amount of training data, and often lack generalization capability and face overfitting. We present a new solution: Spatial-Temporal Contrasting for Fine-Grained Urban Flow Inference (STCF). It consists of (i) two pre-training networks for spatial-temporal contrasting between flow maps; and (ii) one coupled fine-tuning network for fusing learned features. By attracting spatial-temporally similar flow maps while distancing dissimilar ones within the representation space, STCF enhances efficiency and performance. Comprehensive experiments on two large-scale, real-world urban flow datasets reveal that STCF reduces inference error by up to 13.5%, requiring significantly fewer data and model parameters than prior arts.