2024
DOI: 10.1186/s13007-024-01278-0
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A deep learning approach for deriving wheat phenology from near-surface RGB image series using spatiotemporal fusion

Yucheng Cai,
Yan Li,
Xuerui Qi
et al.

Abstract: Accurate monitoring of wheat phenological stages is essential for effective crop management and informed agricultural decision-making. Traditional methods often rely on labour-intensive field surveys, which are prone to subjective bias and limited temporal resolution. To address these challenges, this study explores the potential of near-surface cameras combined with an advanced deep-learning approach to derive wheat phenological stages from high-quality, real-time RGB image series. Three deep learning models … Show more

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