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Agricultural cropland mapping using black-and-white aerial photography,Object-Based Image Analysis and Random Forests
Institution:1. Department of Archaeology and Near Eastern Cultures, Tel Aviv University, Israel;2. McDonald Institute for Archaeological Research, University of Cambridge, United Kingdom;3. Israel Antiquity Authority, Israel;4. Geological Survey of Israel, Israel;5. Independent Researcher;1. Department of Geography, McGill University, Montreal, QC H3A2K6, Canada;2. UBC School of Public Policy and Global Affairs and Institute for Resources, Environment, and Sustainability, University of British Columbia, 6476 NW Marine Drive, Vancouver, BC V6T1Z2, Canada;3. Department of Earth and Environment, Boston University, 685 Commonwealth Avenue, Boston, MA 02215, USA
Abstract:Land-use and land-cover (LULC) conversions have an important impact on land degradation, erosion and water availability. Information on historical land cover (change) is crucial for studying and modelling land- and ecosystem degradation. During the past decades major LULC conversions occurred in Africa, Southeast Asia and South America as a consequence of a growing population and economy. Most distinct is the conversion of natural vegetation into cropland. Historical LULC information can be derived from satellite imagery, but these only date back until approximately 1972. Before the emergence of satellite imagery, landscapes were monitored by black-and-white (B&W) aerial photography. This photography is often visually interpreted, which is a very time-consuming approach. This study presents an innovative, semi-automated method to map cropland acreage from B&W photography. Cropland acreage was mapped on two study sites in Ethiopia and in The Netherlands. For this purpose we used Geographic Object-Based Image Analysis (GEOBIA) and a Random Forest classification on a set of variables comprising texture, shape, slope, neighbour and spectral information. Overall mapping accuracies attained are 90% and 96% for the two study areas respectively. This mapping method increases the timeline at which historical cropland expansion can be mapped purely from brightness information in B&W photography up to the 1930s, which is beneficial for regions where historical land-use statistics are mostly absent.
Keywords:Agricultural cropland expansion  Land-use change  Black-and-white (historical) aerial photography  GEOBIA  Random Forests
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