Abstract

Seasonal dynamic land cover maps could provide useful information to ecosystem, water-resource and climate modelers. However, they are rarely mapped more frequent than annually. Here, we propose an approach to map dynamic land cover types with frequently available satellite data. Landsat 8 data acquired from nine dates over Beijing within a one-year period were used to map seasonal land cover dynamics. A two-step procedure was performed for training sample collection to get better results. Sample sets were interpreted for each acquisition date of Landsat 8 image. We used the random forest classifier to realize the mapping. Nine sets of experiments were designed to incorporate different input features and use of spatial temporal information into the dynamic land cover classification. Land cover maps obtained with single-date data in the optical spectral region were used as benchmarks. Texture, NDVI and thermal infrared bands were added as new features for improvements. A Markov random field (MRF) model was applied to maintain the spatio-temporal consistency. Classifications with all features from all images were performed, and an MRF model was also applied to the results estimated with all features. The best overall accuracies achieved for each date ranged from 75.31% to 85.61%.

Highlights

  • Land cover and land cover change have great impact on the biogeochemical and biogeophysical processes as well as climate change [1]

  • The leaf-on/leaf-off change corresponds to two major stages of the “phenological change” of some vegetation species. Since their status changes with season and such changes alter the surface characteristics, we considered them seasonal dynamics of land cover in this research

  • The random forest (RF) [25] classifier was used for land cover classification and probability estimation of Landsat 8 data

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Summary

Introduction

Land cover and land cover change have great impact on the biogeochemical and biogeophysical processes as well as climate change [1]. Some climate models require information about the time-evolving paths of land cover [2]. Information on single categories of land cover, such as the 30 m continuous fields of tree cover [10] and the 30 m forest cover, change in the 21st century [11] were derived from Landsat data at the global scale. In all these efforts, land cover types were deemed static in a year

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