A New Insight into Land Use Classification Based on Aggregated Mobile Phone Data
Tao Pei, Stanislav Sobolevsky, Carlo Ratti, Shih-Lung Shaw, Chenghu, Zhou

TL;DR
This paper proposes a novel method for urban land use classification using aggregated mobile phone data, combining temporal activity patterns and semi-supervised clustering to infer land use types, validated with data from Singapore.
Contribution
It introduces a new approach leveraging mobile phone activity data for land use classification, integrating temporal patterns with fuzzy clustering, addressing limitations of traditional remote sensing methods.
Findings
Detection rate of 58.03% in land use classification
Accuracy varies with land use heterogeneity
Higher tower density improves classification accuracy
Abstract
Land use classification is essential for urban planning. Urban land use types can be differentiated either by their physical characteristics (such as reflectivity and texture) or social functions. Remote sensing techniques have been recognized as a vital method for urban land use classification because of their ability to capture the physical characteristics of land use. Although significant progress has been achieved in remote sensing methods designed for urban land use classification, most techniques focus on physical characteristics, whereas knowledge of social functions is not adequately used. Owing to the wide usage of mobile phones, the activities of residents, which can be retrieved from the mobile phone data, can be determined in order to indicate the social function of land use. This could bring about the opportunity to derive land use information from mobile phone data. To…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Impact of Light on Environment and Health · Data-Driven Disease Surveillance
