Identification of Larch Caterpillar Infestation Severity Based on Unmanned Aerial Vehicle Multispectral and LiDAR Features

Author:

He-Ya Sa1,Huang Xiaojun123,Zhou Debao4,Zhang Junsheng4,Bao Gang12,Tong Siqin12,Bao Yuhai12,Ganbat Dashzebeg5,Tsagaantsooj Nanzad5,Altanchimeg Dorjsuren6,Enkhnasan Davaadorj6ORCID,Ariunaa Mungunkhuyag5,Guo Jiaze1

Affiliation:

1. College of Geographical Science, Inner Mongolia Normal University, Hohhot 010022, China

2. Inner Mongolia Key Laboratory of Remote Sensing & Geography Information System, Hohhot 010022, China

3. Inner Mongolia Key Laboratory of Disaster and Ecological Security on the Mongolia Plateau, Hohhot 010022, China

4. Forest Bidogical Disaster Prevention and Control (Seed) Station, The Great Khingan Montains of Inner Mongoli, Yakeshi 022150, China

5. Institute of Geography and Geoecology, Mongolian Academy of Sciences, Ulaanbaatar 15170, Mongolia

6. Institute of Biology, Mongolian Academy of Sciences, Ulaanbaatar 13330, Mongolia

Abstract

Utilizing UAV remote sensing technology to acquire information on forest pests is a crucial technical method for determining the health of forest trees. Achieving efficient and precise pest identification has been a major research focus in this field. In this study, Dendrolimus superans (Butler) was used as the research object to acquire UAV multispectral, LiDAR, and ground-measured data for extracting sensitive features using ANOVA and constructing a severity-recognizing model with the help of random forest (RF) and support vector machine (SVM) models. Sixteen sensitive feature sets (including multispectral vegetation indices and LiDAR features) were selected for training the recognizing model, of which the normalized differential greenness index (NDGI) and 25% height percentile were the most sensitive and could be used as important features for recognizing larch caterpillar infestations. The model results show that the highest accuracy is SVMVI+LIDAR (OA = 95.8%), followed by SVMVI, and the worst accuracy is RFLIDAR. For identifying healthy, mild, and severely infested canopies, the SVMVI+LIDAR model achieved 90%–100% for both PA and UA. The optimal model chosen to map the spatial distribution of severity at the single-plant scale in the experimental area demonstrated that the severity intensified with decreasing elevation, especially from 748–758 m. This study demonstrates a high-precision identification method of larch caterpillar infestation severity and provides an efficient and accurate data reference for intelligent forest management.

Funder

National Natural Science Foundation of China

Inner Mongolia Autonomous Region Science and Technology Plan Project

Natural Science Foundation of Inner Mongolia Autonomous Region

Young Scientific and Technological Talents in High Schools

Ministry of Education Industry–University Cooperative Education Project

Publisher

MDPI AG

Reference72 articles.

1. Advances in the researches of Dendrolimus superans of Daxing’an Mountain of China;Chen;J. Northwest For. Univ.,2011

2. Huang, X.-J. (2019). Remote Sensing Identification and Monitoring of Larch Needle Pests Based on Ground Hyperspectral Data. [Ph.D. Thesis, Lanzhou University].

3. Effects of different ratio structures of mixed forests on the occurrence number, probability and distribution of Dendrolimus superans Butler;Sun;J. Shanxi Agric. Univ. (Nat. Sci. Ed.),2022

4. Assessment of forest carbon storage and carbon sequestration potential in key state-owned forest areas of the Great Khingan Mountains, Heilongjiang Province;Chen;J. Ecol. Environ.,2022

5. Thinking after the survey of Greater Khingan Mountains Forest Area;Pan;J. Northeast. For. Univ.,2004

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