Smart City Gnosys

Smart city article details

Title A Self-Supervised Detection Method For Mixed Urban Functions Based On Trajectory Temporal Image
ID_Doc 4554
Authors Chen Z.; Tang L.; Guo X.; Zheng G.
Year 2024
Published Computers, Environment and Urban Systems, 110
DOI http://dx.doi.org/10.1016/j.compenvurbsys.2024.102113
Abstract Urban function detection plays a significant role in urban complex system recognition and smart city construction. The location big data obtained from human activities, which is cohesive with urban functions, provides valuable insights into human mobility patterns. However, as urban functions become highly mixed, existing feature representation structures struggle to explicitly depict the latent human activity features, limiting their applicability for detecting mixed urban functions in a supervised manner. To close the gap, this study analogizes the latent human activity features to the shape, texture, and color semantics of images, with a contrastive learning framework being introduced to extract image-based crowd mobility features for detecting mixed urban functions. Firstly, by translating human activity features into image semantics, a novel feature representation structure termed the Trajectory Temporal Image (TTI) is proposed to explicitly represent human activity features. Secondly, the Vision Transformer (ViT) model is employed to extract image-based semantics in a self-supervised manner. Lastly, based on urban dynamics, a mathematical model is developed to represent mixed urban functions, and the decomposition of mixed urban functions is achieved using the theory of fuzzy sets. A case study is conducted using taxi trajectory data in three cities in China. Experimental results indicate the high discriminability of our proposed method, especially in areas with weak activity intensity, and reveal the relationship between the mixture index and the trip distance. The proposed method is promising to establish a solid scientific foundation for comprehending the urban complex system. © 2024 Elsevier Ltd
Author Keywords Contrastive learning; FCM; Human activity; Location big data; Mixed urban functions; Trajectory temporal image


Similar Articles


Id Similarity Authors Title Published
20530 View0.888Cao J.; Wang X.; Chen G.; Tu W.; Shen X.; Zhao T.; Chen J.; Li Q.Disentangling The Hourly Dynamics Of Mixed Urban Function: A Multimodal Fusion Perspective Using Dynamic GraphsInformation Fusion, 117 (2025)
25909 View0.854Liu C.; Zhang H.; Guan H.; Zhang J.Extracting Region Function Representations Through Compressed Trajectory EmbeddingsData Compression Conference Proceedings (2024)
20485 View0.853Liu C.; Yang Y.; Yao Z.; Xu Y.; Chen W.; Yue L.; Wu H.Discovering Urban Functions Of High-Definition Zoning With Continuous Human TracesInternational Conference on Information and Knowledge Management, Proceedings (2021)
27405 View0.853Bai L.; Wang J.; Li Y.Functional Embedding Of Urban Areas In Human Mobility Patterns Based On Road Network InformationLecture Notes in Electrical Engineering, 1033 (2024)