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Improving the accuracy of land cover classification in cloud persistent areas using optical and radar satellite image time series

Maïlys Lopes, Pierre‐Louis Frison, Merry Crowson, Eleanor Warren‐Thomas, Bambang Hariyadi, Winda Dwi Kartika, Fahmuddin Agus, Keith C. Hamer, Lindsay C. Stringer, Jane K. Hill, Nathalie Pettorelli

2020Methods in Ecology and Evolution50 citationsDOIOpen Access PDF

Abstract

Abstract The recent availability of high spatial and temporal resolution optical and radar satellite imagery has dramatically increased opportunities for mapping land cover at fine scales. Fusion of optical and radar images has been found useful in tropical areas affected by cloud cover because of their complementarity. However, the multitemporal dimension these data now offer is often neglected because these areas are primarily characterized by relatively low levels of seasonality and because the consideration of multitemporal data requires more processing time. Hence, land cover mapping in these regions is often based on imagery acquired for a single date or on an average of multiple dates. The aim of this work is to assess the added value brought by the temporal dimension of optical and radar time series when mapping land cover in tropical environments. Specifically, we compared the accuracies of classifications based on (a) optical time series, (b) their temporal average, (c) radar time series, (d) their temporal average, (e) a combination of optical and radar time series and (f) a combination of their temporal averages for mapping land cover in Jambi province, Indonesia, using Sentinel‐1 and Sentinel‐2 imagery. Using the full information contained in the time series resulted in significantly higher classification accuracies than using temporal averages (+14.7% for Sentinel‐1, +2.5% for Sentinel‐2 and +2% combining Sentinel‐1 and Sentinel‐2). Overall, combining Sentinel‐2 and Sentinel‐1 time series provided the highest accuracies (Kappa = 88.5%). Our study demonstrates that preserving the temporal information provided by satellite image time series can significantly improve land cover classifications in tropical biodiversity hotspots, improving our capacity to monitor ecosystems of high conservation relevance such as peatlands. The proposed method is reproducible, automated and based on open‐source tools satellite imagery.

Topics & Concepts

Remote sensingLand coverRadarTime seriesSatelliteCloud coverSatellite imageryTemporal resolutionSeries (stratigraphy)Environmental scienceComputer scienceGeographyCloud computingLand useGeologyMachine learningTelecommunicationsPhysicsCivil engineeringAerospace engineeringOperating systemEngineeringQuantum mechanicsPaleontologyRemote Sensing in AgricultureRemote Sensing and LiDAR ApplicationsRemote-Sensing Image Classification
Improving the accuracy of land cover classification in cloud persistent areas using optical and radar satellite image time series | Litcius