Classification of forest vertical structure in South Korea from aerial orthophoto and lidar data using an artificial neural network

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Abstract

Every vegetation colony has its own vertical structure. Forest vertical structure is considered as an important indicator of a forest's diversity and vitality. The vertical structure of a forest has typically been investigated by field survey, which is the traditional method of forest inventory. However, this method is very time- and cost-consuming due to poor accessibility. Remote sensing data such as satellite imagery, aerial photography, and lidar data can be a viable alternative to the traditional field-based forestry survey. In this study, we classified forest vertical structures from red-green-blue (RGB) aerial orthophotos and lidar data using an artificial neural network (ANN), which is a powerful machine learning technique. The test site was Gongju province in South Korea, which contains single-, double-, and triple-layered forest structures. The performance of the proposed method was evaluated by comparing the results with field survey data. The overall accuracy achieved was about 70%. It means that the proposed approach can classify the forest vertical structures from the aerial orthophotos and lidar data.

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Kwon, S. K., Jung, H. S., Baek, W. K., & Kim, D. (2017). Classification of forest vertical structure in South Korea from aerial orthophoto and lidar data using an artificial neural network. Applied Sciences (Switzerland), 7(10). https://doi.org/10.3390/app7101046

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