Bayesian_LSP
phenology estimator
A Bayesian model for estimating annual land surface phenology from sparse remote sensing data
A Bayesian hierarchical model that quantifies long-term annual land surface phenology from sparse time series of vegetation indices.
45 stars
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11 forks
Language: R
last commit: 3 months ago
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jagsland-surface-modelingland-surface-phenologylandsatphenologyrremote-sensing
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