Abstract

Vegetation phenology plays a key role in influencing ecosystem processes and biosphere-atmosphere feedbacks. Digital cameras such as PhenoCam that monitor vegetation canopies in near real-time provide continuous images that record phenological and environmental changes. There is a need to develop methods for automated and effective detection of vegetation dynamics from PhenoCam images. Here we developed a method to predict leaf phenology of deciduous broadleaf forests from individual PhenoCam images using deep learning approaches. We tested four convolutional neural network regression (CNNR) networks on their ability to predict vegetation growing dates based on PhenoCam images at 56 sites in North America. In the one-site experiment, the predicted phenology dated to after the leaf-out events agree well with the observed data, with a coefficient of determination (R2) of nearly 0.999, a root mean square error (RMSE) of up to 3.7 days, and a mean absolute error (MAE) of up to 2.1 days. The method developed achieved lower accuracies in the all-site experiment than in the one-site experiment, and the achieved R2 was 0.843, RMSE was 25.2 days, and MAE was 9.3 days in the all-site experiment. The model accuracy increased when the deep networks used the region of interest images rather than the entire images as inputs. Compared to the existing methods that rely on time series of PhenoCam images for studying leaf phenology, we found that the deep learning method is a feasible solution to identify leaf phenology of deciduous broadleaf forests from individual PhenoCam images.

Highlights

  • Guangdong Key Laboratory for Urbanization and Geo-Simulation, School of Geography and Planning, School of Environmental Science and Engineering, Southern University of Science and Technology, Abstract: Vegetation phenology plays a key role in influencing ecosystem processes and biosphereatmosphere feedbacks

  • In terms of the model performance, ResNet101-R achieved the best accuracy with root mean square error (RMSE) of 4.38 days and the mean absolute error (MAE) of 2.15 days in the one-site dataset, and

  • This study investigated the ability of four deep learning models to identify leaf phenology from individual PhenoCam images

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Summary

Introduction

Guangdong Key Laboratory for Urbanization and Geo-Simulation, School of Geography and Planning, School of Environmental Science and Engineering, Southern University of Science and Technology, Abstract: Vegetation phenology plays a key role in influencing ecosystem processes and biosphereatmosphere feedbacks. Digital cameras such as PhenoCam that monitor vegetation canopies in near real-time provide continuous images that record phenological and environmental changes. We developed a method to predict leaf phenology of deciduous broadleaf forests from individual PhenoCam images using deep learning approaches. Monitoring leaf phenology is important for us to understand the interactive relationship between a changing climate and terrestrial ecosystems

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