Abstract

Abstract. Both agricultural area expansion and intensification are necessary to cope with the growing demand for food, and the growing threat of food insecurity which is rapidly engulfing poor and under-privileged sections of the global population. Therefore, it is of paramount importance to have the ability to accurately estimate crop area and spatial distribution. Remote sensing has become a valuable tool for estimating and mapping cropland areas, useful in food security monitoring. This work contributes to addressing this broad issue, focusing on the comparative performance analysis of two mapping approaches (i) a hyper-temporal Normalized Difference Vegetation Index (NDVI) analysis approach and (ii) a Landscape-ecological approach. The hyper-temporal NDVI analysis approach utilized SPOT 10-day NDVI imagery from April 1998–December 2008, whilst the Landscape-ecological approach used multitemporal Landsat-7 ETM+ imagery acquired intermittently between 1992 and 2002. Pixels in the time-series NDVI dataset were clustered using an ISODATA clustering algorithm adapted to determine the optimal number of pixel clusters to successfully generalize hyper-temporal datasets. Clusters were then characterized with crop cycle information, and flooding information to produce an NDVI unit map of rice classes with flood regime and NDVI profile information. A Landscape-ecological map was generated using a combination of digitized homogenous map units in the Landsat-7 ETM+ imagery, a Land use map 2005 of the Mekong delta, and supplementary datasets on the regions terrain, geo-morphology and flooding depths. The output maps were validated using reported crop statistics, and regression analyses were used to ascertain the relationship between land use area estimated from maps, and those reported in district crop statistics. The regression analysis showed that the hyper-temporal NDVI analysis approach explained 74% and 76% of the variability in reported crop statistics in two rice crop and three rice crop land use systems respectively. In contrast, 64% and 63% of the variability was explained respectively by the Landscape-ecological map. Overall, the results indicate the hyper-temporal NDVI analysis approach is more accurate and more useful in exploring when, why and how agricultural land use manifests itself in space and time. Furthermore, the NDVI analysis approach was found to be easier to implement, was more cost effective, and involved less subjective user intervention than the landscape-ecological approach.

Highlights

  • Agricultural land use mapping is required for the monitoring and planning of agricultural resources at local, regional and continental levels

  • The results indicate the hyper-temporal Normalized Difference Vegetation Index (NDVI) analysis approach is more accurate and more useful in exploring when, why and how agricultural land use manifests itself in space and time

  • A number of studies have used either the hyper-temporal NDVI analysis approach e.g. or Landscape-ecological approach (Zonneveld, 1995; Homer et al, 1997) currently there is a lack of information pertaining how the two approaches compare to each other in terms of their performance, accuracy, and applicability. Such information is potentially useful for those seeking to efficiently tailor their approaches to gain the maximum amount of information from studies of similar landscapes. This study explores this comparability, firstly appraising the individual outputs, comparing the two in terms of their individual performance and proposing the most accurate approach for agricultural land use mapping

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Summary

Introduction

Agricultural land use mapping is required for the monitoring and planning of agricultural resources at local, regional and continental levels. The increasing global population has growing food requirements, currently met by a combination of both agricultural area expansion and intensification. This requires accurate estimations of crop areas and its spatial distributions (Khan et al, 2010). The availability of current and accurate land use information is vital for food security planning. Supporting this need for information, remote sensing data and its analysis has become a valuable tool for estimating and mapping cropland area, which can aid in such food security monitoring. This study contributes to this issue by focusing on a comparative performance analysis of two mapping approaches: (i) a hyper-temporal Normalized Difference Vegetation Index (NDVI) analysis approach and (ii) a Landscape-ecological approach

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