Abstract

Terrestrial remote sensing data products retrieved from radiometric measurements in the optical and thermal infrared spectrum such as vegetation spectral indices can be heavily contaminated by atmospheric conditions, including cloud and aerosol layers. This contamination results in gaps or noisy observations. The harmonic analysis of time series (HANTS) has been widely used for time series reconstruction of remote sensing imagery in recent decades. To use HANTS model, a series of parameters, such as number of frequencies (NF), fitting error tolerance (FET), degree of over-determinedness (DoD), and regularization factor (Delta), need to be defined by users. These parameters provide flexibilities, but also make it difficult for non-expert users to determine appropriate settings for specific applications. This study systematically evaluated the reconstruction performance of the model under different parameter setting scenarios by simulating pixel-wise reference and noisy NDVI time series. The results of these numerical experiments were further used to identify optimal settings and improve global NDVI reconstruction performance. The results suggested optimal settings for different areas (local optimization). If a user opts to use unique settings for global reconstruction, the setting NF = 4, FET = 0.05, DoD = 5, and Delta = 0.5 can produce the best performance across all setting scenarios (global optimization). In addition, several internal improvements, such as dynamic weighting scheme, polynomial and inter-annual harmonic components, and ancillary attributes of input data can be used to further improve the performance of reconstruction. With these results, future non-expert users can easily determine appropriate settings of HANTS for specific applications in different regions.

Highlights

  • IntroductionResources Technology Satellite (ERTS-1) was launched into space in 1972 [1,2]

  • A wealth of terrestrial satellite data products has been accumulated since the EarthResources Technology Satellite (ERTS-1) was launched into space in 1972 [1,2]

  • Reconstruction performance can be significantly improved in specific regions of the Earth by using dynamic weighting instead of the classical rigid weighting scheme and by adding 3-order polynomial or inter-annual harmonic components to account for inter-annual variability

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Summary

Introduction

Resources Technology Satellite (ERTS-1) was launched into space in 1972 [1,2]. Vegetation spectral indices such as the Normalized Difference Vegetation Index (NDVI) are widely applied to monitor and to evaluate regional and continental vegetation dynamics [3,4]. Imaging Radiometer Suite (VIIRS), onboard sun-synchronous polar orbiting satellites provide daily global coverage observations [5,6]. Satellites carrying sensors with higher spatial resolution, such as Landsat Thematic Mapper (TM) series and Sentinal2A/B Multispectral Instrument (MSI), have a re-revisit time ranging from four to more than 15 days [7,8]. Clouds cover more than 50% of the earth surface at any given time and this is the main constraint on retrieving reliable time series of at-surface

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