北京师范大学地表过程与资源生态国家重点实验室
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Monitoring vegetation dynamics by coupling linear trend analysis with change vector analysis: a case study in the Xilingol steppe in northern China
发布时间: 2011-10-25  

Yuanyuan Zhaoa,b , Chunyang Hea,b and Qiaofeng Zhangc
a、 State Key Laboratory of Earth Surface Processes and Resource Ecology, Beijing Normal University, Beijing, 100875, China
b、 College of Resources Science & Technology, Beijing Normal University, Beijing, 100875, China
c、 Department of Geosciences, Murray State University, Murray, KY, 42071, USA
Abstract: Timely and accurate monitoring of grassland vegetation dynamics is essential for sustainable grassland management in China. We coupled linear trend analysis (LTA) with change vector analysis (CVA) to improve the effectiveness of grassland monitoring. LTA was used to detect continuous inter-annual vegetation trends to identify significant change trend regions (SCTRs) in location and significant change trend periods (SCTPs) in time. Then CVA was used to depict intra-annual change intensities in SCTRs for a SCTP. The Xilingol steppe in northern China was selected to evaluate the method’s performance. Digital images of degraded grasslands derived by the proposed method using data from the VEGETATION instrument on board the Système Probatoire d’Observation de la Terre (SPOT/VGT) were compared to those derived from Landsat images of the same area. Linear regression analysis comparing degraded grassland areas from the two imagery sources showed good correspondence. An overall accuracy of 85.33% and a kappa coefficient of 0.66 were obtained through error matrix analysis. The results showed a general grassland degradation trend from 1998 to 2007. The SCTRs were mostly distributed in the north, and the grassland degradation trend in SCTRs was more significant from1998 to 2001 and from2003 to 2007 during the study period. About 19% of the vegetated area was composed of degraded steppe grassland for the two time periods.
 
Published in International Journal of Remote Sensing. 2011, DOI: 10.1080/01431161.2011.594102.

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