Individual Tree AGB Estimation of Malania oleifera Based on UAV-RGB Imagery and Mask R-CNN

Author:

Gong Maojia1,Kou Weili2,Lu Ning2ORCID,Chen Yue3ORCID,Sun Yongke2,Lai Hongyan1,Chen Bangqian4ORCID,Wang Juan5,Li Chao6

Affiliation:

1. College of Forestry, Southwest Forestry University, Kunming 650224, China

2. College of Big Data and Intelligent Engineering, Southwest Forestry University, Kunming 650224, China

3. College of Mechanics and Transportation, Southwest Forestry University, Kunming 650224, China

4. Rubber Research Institute (RRI), Chinese Academy of Tropical Agricultural Sciences (CATAS), Hainan Danzhou Agro-Ecosystem National Observation and Research Station, Haikou 571101, China

5. Eco-Development Academy, Southwest Forestry University, Kunming 650224, China

6. Cigarette Product Quality Test Center, Technology Center of China Tobacco Yunnan Industrial Co., Ltd., Kunming 650023, China

Abstract

Forest aboveground biomass (AGB) is an important research topic in the field of forestry, with implications for carbon cycles and carbon sinks. Malania oleifera Chun et S. K. Lee (M. oleifera) is a valuable plant species that is listed on the National Second-Class Protected Plant checklist and has received global attention for its conservation and resource utilization. To obtain accurate AGB of individual M. oleifera trees in a fast, low-finance-cost and low-labor-cost way, this study first attempted to estimate individual M. oleifera tree AGB by combining the centimeter-level resolution RGB imagery derived from unmanned aerial vehicles (UAVs) and the deep learning model of Mask R-CNN. Firstly, canopy area (CA) was obtained from the 3.5 cm high-resolution UAV-RGB imagery using the Mask R-CNN; secondly, to establish an allometric growth model between the diameter at breast height (DBH) and CA, the correlation analysis of both was conducted; thirdly, the AGB estimation method of individual M. oleifera trees was presented based on an empirical equation. The study showed that: (1) The deep learning model of Mask R-CNN achieved an average segmentation accuracy of 90% in the mixed forests to the extraction of the canopy of M. oleifera trees from UAV-RGB imagery. (2) The correlation between the extracted CA and field-measured DBH reached an R2 of 0.755 (n = 96). (3) The t-test method was used to verify the predicted and observed values of the CA-DBH model presented in this study, and the difference in deviation was not significant (p > 0.05). (4) AGB of individual M. oleifera was estimated for the first time. This study provides a reference method for the estimation of individual tree AGB of M. oleifera based on centimeter-level resolution UAV-RGB images and the Mask R-CNN deep learning.

Funder

the National Natural Science Foundation of China

The Youth Top Talents of Yunnan Ten Thousand Talents Program

Yunnan province major science and technology special biological resources digital development and application project

Scientific Research Foundation of Yunnan Provincial Department of Education

Publisher

MDPI AG

Subject

Forestry

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