Abstract

Land use and land cover (LULC) are diverse and complex in urban areas. Remotely sensed images are commonly used for land cover classification but hardly identifies urban land use and functional areas because of the semantic gap (i.e., different definitions of similar or identical buildings). Social media data, “marks” left by people using mobile phones, have great potential to overcome this semantic gap. Multisource remote sensing data are also expected to be useful in distinguishing different LULC types. This study examined the capability of combined multisource remote sensing images and social media data in urban LULC classification. Multisource remote sensing images included a Chinese ZiYuan-3 (ZY-3) high-resolution image, a Landsat 8 Operational Land Imager (OLI) multispectral image, and a Sentinel-1A synthetic aperture radar (SAR) image. Social media data consisted of the hourly spatial distribution of WeChat users, which is a ubiquitous messaging and payment platform in China. LULC was classified into 10 types, namely, vegetation, bare land, road, water, urban village, greenhouses, residential, commercial, industrial, and educational buildings. A method that integrates object-based image analysis, decision trees, and random forests was used for LULC classification. The overall accuracy and kappa value attained by the combination of multisource remote sensing images and WeChat data were 87.55% and 0.84, respectively. They further improved to 91.55% and 0.89, respectively, by integrating the textural and spatial features extracted from the ZY-3 image. The ZY-3 high-resolution image was essential for urban LULC classification because it is necessary for the accurate delineation of land parcels. The addition of Landsat 8 OLI, Sentinel-1A SAR, or WeChat data also made an irreplaceable contribution to the classification of different LULC types. The Landsat 8 OLI image helped distinguish between the urban village, residential buildings, commercial buildings, and roads, while the Sentinel-1A SAR data reduced the confusion between commercial buildings, greenhouses, and water. Rendering the spatial and temporal dynamics of population density, the WeChat data improved the classification accuracies of an urban village, greenhouses, and commercial buildings.

Highlights

  • Land use and land cover (LULC) change is an essential component of environmental change [1,2]

  • Given that the ZY-3 high-resolution image allowed for the accurate delineation of land parcels, all the classifications were performed based on the image objects delineated from the ZY-3 image

  • This study investigated the capability of the combination of multisource remote sensing images and social media data in urban LULC classification

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Summary

Introduction

Land use and land cover (LULC) change is an essential component of environmental change [1,2]. LULC has become increasingly diverse and complex in urban areas, especially in areas undergoing rapid urban development and renewal. With rapid economic development, urban LULC has become increasingly complex and diverse. High accuracy of LULC classification is difficult to attain using single-source remote sensing data. Some studies have combined optical and SAR data to improve LC classification accuracy [14,15]. Ban et al [16] used QuickBird multispectral images and RADARSAT SAR data for LC classification and found that the classification accuracy of several LC categories could be improved by more than 19%. The potential of combining multisource remote sensing data for LU classification accuracy, remains to be demonstrated

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