Title
First Results From the Phenology-Based Synthesis Classifier Using Landsat 8 Imagery
Abstract
A fully automatic phenology-based synthesis (PBS) classification algorithm was developed to map land cover based on medium spatial resolution satellite data using the Google Earth Engine cloud computing platform. Vegetation seasonality, particularly in the tropical dry regions, can lead conventional algorithms based on a single date image classification to “misclassify” land cover types, as the selected date might reflect only a particular stage of the natural phenological cycle. The PBS classifier operates with occurrence rules applied to a selection of single date image classifications of the study area to assign the most appropriate land cover class. Since the launch of Landsat 8 in 2013, it has been possible to acquire imagery at any point on the Earth every 16 days with exceptional radiometric quality. The relatively high global acquisition frequency and the open data policy allow near-real-time land cover mapping and monitoring with automated tools such as the PBS classifier. We mapped four protected areas and their 20-km buffer zones from different ecoregions in Sub-Saharan Africa using the PBS classifier to present its first results. Accuracy assessment was carried out through a visual interpretation of very high resolution images using a Web geographic information system interface. The combined overall accuracy was over 90%, which demonstrates the potential of the classifier and the power of cloud computing in geospatial sciences.
Year
DOI
Venue
2015
10.1109/LGRS.2015.2409982
IEEE Geoscience and Remote Sensing Letters
Keywords
DocType
Volume
remote sensing,cloud computing,satellites,phenology,earth,image classification,search engines,accuracy,robustness
Journal
PP
Issue
ISSN
Citations 
99
1545-598X
3
PageRank 
References 
Authors
0.47
4
5
Name
Order
Citations
PageRank
domingos s l simonetti130.47
Edoardo Simonetti230.47
Zoltan Szantoi3193.55
Andrea Lupi430.47
Hugh Eva593.47