Authors
Calvin Ka Fai Lee, Guangqin Song, Helene C Muller-Landau, Shengbiao Wu, S Joseph Wright, KC Cushman, Raquel Fernandes Araujo, Stephanie Bohlman, Yingyi Zhao, Ziyu Lin, Zounachuan Sun, Peter Chuen Yan Cheng, Michael Kwok-Po Ng, Jin Wu
Publication date
2023/7/1
Journal
ISPRS Journal of Photogrammetry and Remote Sensing
Volume
201
Pages
92-103
Publisher
Elsevier
Description
Detection of flowering and quantification of flowering phenology are key to monitoring the reproduction of tropical trees and their response to global change. However, effective monitoring of flowering over various scales from individuals to forest ecosystem levels is lacking due to the relatively small sizes of flowers, diverse flowering strategies across species, and the short duration of flowering, making accurate flower detection difficult. Drone-based surveys require less time and human resources than traditional ground-based flower surveys and thus may be able to help address this in a cost-effective manner but remain underexplored in species-rich tropical forest ecosystems. Here, we developed a method that integrated the Residual Networks 50 (ResNet50) deep learning algorithm with high resolution imagery (c. 0.05 m) from monthly drone surveys done in a 50-ha tropical forest plot on Barro Colorado Island …
Total citations
2023202425