

Author: Waylen Peter Southworth Jane Gibbes Cerian Tsai Huiping
Publisher: MDPI
E-ISSN: 2072-4292|6|5|4473-4497
ISSN: 2072-4292
Source: Remote Sensing, Vol.6, Iss.5, 2014-05, pp. : 4473-4497
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Abstract
Despite the existence of long term remotely sensed datasets, change detection methods are limited and often remain an obstacle to the effective use of time series approaches in remote sensing applications to Land Change Science. This paper establishes some simple statistical tests to be applied to NDVI-derived time series of remotely sensed data products. Specifically, the methods determine the statistical significance of three separate metrics of the persistence of vegetation cover or changes within a landscape by comparison to various forms of “benchmarks”;
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