High-quality vegetation index product generation: A review of NDVI time series reconstruction techniques

Shuang Li(Wuhan University), Liang Xu(Wuhan University), Yinghong Jing(Wuhan University), Hang Yin(Fujian Institute of Oceanography), Xinghua Li(Wuhan University), Xiaobin Guan(Wuhan University)
International Journal of Applied Earth Observation and Geoinformation
December 1, 2021
Cited by 262Open Access
Full Text

Abstract

Normalized difference vegetation index (NDVI) derived from satellites has been ubiquitously utilized in the field of remote sensing. Nevertheless, there are multitudinous contaminations in NDVI time series because of the atmospheric disturbance, cloud cover, sensor failure, and so on. It is crucial to remove the noises prior to further applications. Numerous techniques have been proposed to alleviate this issue in the last few decades. To the best of our knowledge, there hasn’t been a systematical study to summarize and analyze the status of NDVI time series reconstruction techniques since 1980s. As a result, our goal is to recapitulate the current approaches for reconstructing high-quality NDVI time series, followed by an interpretation on the principle, merits and demerits of different kinds of methods. They were mainly classified into temporal-based methods, frequency-based methods and hybrid methods. The evaluation approaches on the quality of NDVI reconstruction were introduced, accompanied with the future development tendency.


Related Papers

No related papers found

Powered by citation graph analysis