Publications

Lu, Ning; Hernandez, Alexander J.; Ramsey, R. Douglas (2015). Land cover dynamics monitoring with Landsat data in Kunming, China: a cost-effective sampling and modelling scheme using Google Earth imagery and random forests. GEOCARTO INTERNATIONAL, 30(2), 186-201.

Abstract
Changes in forest composition impact ecological services, and are considered important factors driving global climate change. A hybrid sampling method along with a modelling approach to map current and past land cover in Kunming, China is reported. MODIS land cover (2001-2011) data-sets were used to detect pixels with no apparent change. Around 3000 'no change points' were systematically selected and sampled using Google Earth's high-resolution imagery. Thirty-five per cent of these points were verified and used for training and validation. We used Random forests to classify multi-temporal Landsat imagery. Results show that forest cover has had a net decrease of 14385 ha (1.3% of forest area), which was primary converted to shrublands (11%), urban and barren land (2.7%) and agriculture (2.5%). Our validation indicates an overall accuracy (Kappa) of 82%. Our methodology can be used to consistently map the dynamics of land cover change in similar areas with minimum costs.

DOI:
10.1080/10106049.2014.894583

ISSN:
1010-6049