Remote Sensing (Jul 2022)

Multimodal Fusion of Mobility Demand Data and Remote Sensing Imagery for Urban Land-Use and Land-Cover Mapping

  • Martina Pastorino,
  • Federico Gallo,
  • Angela Di Febbraro,
  • Gabriele Moser,
  • Nicola Sacco,
  • Sebastiano B. Serpico

DOI
https://doi.org/10.3390/rs14143370
Journal volume & issue
Vol. 14, no. 14
p. 3370

Abstract

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This paper aims at exploring the potentiality of the multimodal fusion of remote sensing imagery with information coming from mobility demand data in the framework of land-use mapping in urban areas. After a discussion on the function of mobility demand data, a probabilistic fusion framework is developed to take advantage of remote sensing and transport data, and their joint use for urban land-use and land-cover applications in urban and surrounding areas. Two different methods are proposed within this framework, the first based on pixelwise probabilistic decision fusion and the second on the combination with a region-based multiscale Markov random field. The experimental validation is conducted on a case study associated with the city of Genoa, Italy.

Keywords