Long time-series NDVI reconstruction in cloud-prone regions via spatio-temporal tensor completion
Dong Chu, Huanfeng Shen, Xiaobin Guan, Jing M. Chen, Xinghua Li, Jie, Li, Liangpei Zhang

TL;DR
This paper introduces an adaptive spatio-temporal tensor completion method to effectively reconstruct long-term NDVI time series in cloud-prone regions by leveraging multi-dimensional correlations, outperforming existing methods.
Contribution
The paper proposes a novel ST-Tensor method that fully utilizes spatio-temporal correlations for NDVI reconstruction, addressing large gaps caused by clouds more effectively than prior approaches.
Findings
Outperforms five previous methods in gap filling accuracy
Better at tracking NDVI seasonal trajectories
Effective in reconstructing long-term NDVI in rainy regions
Abstract
The applications of Normalized Difference Vegetation Index (NDVI) time-series data are inevitably hampered by cloud-induced gaps and noise. Although numerous reconstruction methods have been developed, they have not effectively addressed the issues associated with large gaps in the time series over cloudy and rainy regions, due to the insufficient utilization of the spatial and temporal correlations. In this paper, an adaptive Spatio-Temporal Tensor Completion method (termed ST-Tensor) method is proposed to reconstruct long-term NDVI time series in cloud-prone regions, by making full use of the multi-dimensional spatio-temporal information simultaneously. For this purpose, a highly-correlated tensor is built by considering the correlations among the spatial neighbors, inter-annual variations, and periodic characteristics, in order to reconstruct the missing information via an…
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