| Literature DB >> 36081485 |
Santiago Belda1, Luca Pipia1, Pablo Morcillo-Pallarés1, Juan Pablo Rivera-Caicedo2, Eatidal Amin1, Charlotte De Grave1, Jochem Verrelst1.
Abstract
Optical remotely sensed data are typically discontinuous, with missing values due to cloud cover. Consequently, gap-filling solutions are needed for accurate crop phenology characterization. The here presented Decomposition and Analysis of Time Series software (DATimeS) expands established time series interpolation methods with a diversity of advanced machine learning fitting algorithms (e.g., Gaussian Process Regression: GPR) particularly effective for the reconstruction of multiple-seasons vegetation temporal patterns. DATimeS is freely available as a powerful image time series software that generates cloud-free composite maps and captures seasonal vegetation dynamics from regular or irregular satellite time series. This work describes the main features of DATimeS, and provides a demonstration case using Sentinel-2 Leaf Area Index time series data over a Spanish site. GPR resulted as an optimum fitting algorithm with most accurate gap-filling performance and associated uncertainties. DATimeS further quantified LAI fluctuations among multiple crop seasons and provided phenological indicators for specific crop types.Entities:
Keywords: Gap-filling; Machine learning; Remote sensing; Vegetation phenology
Year: 2020 PMID: 36081485 PMCID: PMC7613385 DOI: 10.1016/j.envsoft.2020.104666
Source DB: PubMed Journal: Environ Model Softw ISSN: 1364-8152 Impact factor: 5.471