AGRI-PHENOPY: AN ALGORITHM FOR EXTRACTING AGRICULTURAL CROPS PHENOLOGY METRICS FROM VEGETATION INDEX TIME SERIES

- 319591
Pôster
Favoritar este trabalho
Como citar esse trabalho?
Resumo

We developed a Python-based algorithm to extract phenological metrics from vegetation index time series obtained from areas of different agricultural crops. The algorithm can be used with vegetation index time series from various sensors, with different spatial and temporal resolutions. It corrects abrupt drops in the time series, smooths the time series using a double logistic function, and extracts four phenological metrics: Start of Season, Peak of Season, End of Season, and Length of Season. In this article, we describe the algorithm and use Normalized Difference Vegetation Index as an example to compare the phenological metrics, although it can be applied to different indices. The results highlight the efficiency of our algorithm in extracting phenological metrics from vegetation index time series of various agricultural crops. Our algorithm is designed to simplify the extraction of phenological metrics and enable the fast and efficient processing of large data volumes.

Compartilhe suas ideias ou dúvidas com os autores!

Sabia que o maior estímulo no desenvolvimento científico e cultural é a curiosidade? Deixe seus questionamentos ou sugestões para o autor!

Faça login para interagir

Tem uma dúvida ou sugestão? Compartilhe seu feedback com os autores!

Instituições
  • 1 INPE
  • 2 Instituto Nacional de Pesquisas Espaciais - Centro Regional da Amazônia - Belém
  • 3 Kansas State University
  • 4 Allianz Brasil
Eixo Temático
  • 1. Agricultura e pecuária
Palavras-chave
algorithm
phenological metrics
vegetation indices
sensors
agricultural crops