Abstract

Research Highlights: This paper proposes a new method for hemispherical forest canopy image segmentation. The method is based on a deep learning methodology and provides a robust and fully automatic technique for the segmentation of forest canopy hemispherical photography (CHP) and gap fraction (GF) calculation. Background and Objectives: CHP is widely used to estimate structural forest variables. The GF is the most important parameter for calculating the leaf area index (LAI), and its calculation requires the binary segmentation result of the CHP. Materials and Methods: Our method consists of three modules, namely, northing correction, valid region extraction, and hemispherical image segmentation. In these steps, a core procedure is hemispherical canopy image segmentation based on the U-Net convolutional neural network. Our method is compared with traditional threshold methods (e.g., the Otsu and Ridler methods), a fuzzy clustering method (FCM), commercial professional software (WinSCANOPY), and the Habitat-Net network method. Results: The experimental results show that the method presented here achieves a Dice similarity coefficient (DSC) of 89.20% and an accuracy of 98.73%. Conclusions: The method presented here outperforms the Habitat-Net and WinSCANOPY methods, along with the FCM, and it is significantly better than the Otsu and Ridler threshold methods. The method takes the original canopy hemisphere image first and then automatically executes the three modules in sequence, and finally outputs the binary segmentation map. The method presented here is a pipelined, end-to-end method.

Highlights

  • IntroductionThe forest canopy is the interface that directly interacts with the external atmospheric environment in the forest ecosystem

  • This paper proposes a fully automatic canopy image segmentation method based on deep learning, This paper proposes a fully automatic canopy image segmentation method based on deep which consists of a preprocessing module and a segmentation module

  • Otsu traditional threshold method a global automatic threshold segmentation method based on the maximum interclass variance, and the Ridler method is a segmentation algorithm that based on the maximum interclass variance, and the Ridler method is a segmentation algorithm that iteratively seeks the optimal threshold

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Summary

Introduction

The forest canopy is the interface that directly interacts with the external atmospheric environment in the forest ecosystem. It integrates the most active biological components in the forest ecosystem [1]. The forest canopy structure determines the energy exchange of water, heat, air, light, and other substances between the arboreal layer and the external environment, and affects many physiological and environmental factors such as understory vegetation and the soil environment, affecting the growth trend for the whole forest community [2]. The acquisition of forest canopy structure parameters is very important for forest growth monitoring, biomass estimation, and forest growth simulation models.

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