4.6 Article

Landscape-scale characterization of cropland in China using Vegetation and landsat TM images

Journal

INTERNATIONAL JOURNAL OF REMOTE SENSING
Volume 23, Issue 18, Pages 3579-3594

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/01431160110106069

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In this landscape-scale study we explored the potential for multitemporal 10-day composite data from the Vegetation sensor to characterize land cover types, in combination with Landsat TM image and agricultural census data. The study area ( 175 km by 165 km) is located in eastern Jiangsu Province, China. The Normalized Difference Vegetation Index (NDVI) and the Normalized Difference Water Index (NDWI) were calculated for seven 10-day composite n(VGT-S10) data from 11 March to 20 May 1999. Multi-temporal NDVI and NDWI were visually examined and used for unsupervised classification. The resultant VGT classification map at 1 km resolution was compared to the TM classification map derived from unsupervised classification of a Landsat 5 TM image acquired on 26 April 1996 at 30 m resolution to quantify percent fraction of cropland within a 1 km VGT pixel; resulting in a mean of 60% for pixels classified as cropland, and 47% for pixels classified as cropland/natural vegetation mosaic. The estimates of cropland area from VGT data and TM image were also aggregated to county-level, using an administrative county map, and then compared to the 1995 county-level agricultural census data. This landscape-scale analysis incorporated image classification (e. g. coarse-resolution VGT data, fine-resolution TM data), statistical census data (e. g. county-level agricultural census data) and a geographical information system (e. g. an administrative county map), and demonstrated the potential of multi-temporal VGT data for mapping of croplands across various spatial scales from landscape to region. This analysis also illustrated some of the limitations of per-pixel classification at the 1 km resolution for a heterogeneous landscape.

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