The impacts of tree shape, disease distribution and observation geometry on the performances of disease spectral indices of apple trees
文献类型: 外文期刊
作者: Zhang, Wenjie 1 ; Yang, Guijun 2 ; Qi, Jianbo 4 ; Chen, Riqiang 1 ; Zhang, Chengjian 1 ; Xu, Bo 2 ; Wu, Baoguo 1 ; Su, Xiaohui 1 ; Zhao, Chunjiang 1 ;
作者机构: 1.Beijing Forestry Univ, Sch Informat Sci & Technol, Beijing 100083, Peoples R China
2.Beijing Acad Agr & Forestry Sci, Informat Technol Res Ctr, Key Lab Quantitat Remote Sensing Agr, Minist Agr & Rural Affairs, Beijing 100097, Peoples R China
3.Changan Univ, Coll Geol Engn & Geomat, State Key Lab Loess Sci, Xian 710064, Peoples R China
4.Beijing Normal Univ, Fac Geog Sci, Ctr GeoData & Anal, State Key Lab Remote Sensing Sci, Beijing 100875, Peoples R China
关键词: Vegetation indices (VIs); 3D radiative transfer modeling (3D RTM); Tree disease; Entropy-weight TOPSIS model
期刊名称:REMOTE SENSING OF ENVIRONMENT ( 影响因子:11.4; 五年影响因子:14.3 )
ISSN: 0034-4257
年卷期: 2025 年 329 卷
页码:
收录情况: SCI
摘要: Vegetation indices (VIs) are widely employed in remote sensing for quantitative monitoring of plant disease due to their simplicity and robustness. However, factors such as canopy structure, the distribution of diseases in the canopy, and observation geometry may influence the spectral response of diseased canopies, potentially affecting the performance of VIs developed under specific disease conditions (e.g., early-stage). To date, fewer comprehensive analytical strategy has been proposed to quantitatively assess the confounding effects of multiple factors, which has hindered the selection of optimal VIs for practical disease monitoring. This study proposes an integrated analytical strategy that combines a three-dimensional radiative transfer model (3D RTM) with a multi-criteria decision-making method - entropy-weighted Technique for Order Preference by Similarity to Ideal Solution (TOPSIS) - to systematically evaluate existing disease-related VIs at the canopy scale, based on simulation outputs and ground measurements. We employed the LargE-Scale remote sensing data and image Simulation framework (LESS) to simulate the bidirectional reflectance factor (BRF) of canopies affected by two representative apple diseases, quantitatively evaluated the confounding effects of tree shape, disease distribution and observation geometry on VIs, and systematically ranked the performance of 40 VIs from two critical perspectives. Results from analyses on two disease types showed that Health Index 2014 (HI2014) and Water Band Index in SWIR (WBISWIR) were the top-performing indices for monitoring apple blotch disease (AMB) and apple mosaic disease (MD), respectively, Notably, WBISWIR emerged as the co-optimal index, exhibiting the highest monitoring efficacy across both diseases. Among all indices, the Normalized PRI (PRIn) demonstrated the greatest robustness against variations in tree shapes and disease distributions. WBISWIR exhibited good performance across diverse observation geometries. When comparing the relative influence of three factors on VI performance, tree shape and disease distribution exerted greater effects than observation geometry. Our findings highlight the complex interactions between VIs and confounding factors, emphasizing the necessity of caution when applying disease-related VIs and advocate for comprehensive consideration of tree shape and stress distribution effects during VI selection, especially for early-stage disease detection. This study offers a robust methodological framework for selecting VIs tailored to specific disease and vegetation characteristics, enhancing the precision of remote sensing-based plant disease assessments.
- 相关文献
作者其他论文 更多>>
-
UssNet: a spatial self-awareness algorithm for wheat lodging area detection
作者:Zhang, Jun;Wu, Qiang;Duan, Fenghui;Liu, Cuiping;Xiong, Shuping;Ma, Xinming;Cheng, Jinpeng;Feng, Mingzheng;Dai, Li;Wang, Xiaochun;Yang, Hao;Yang, Guijun;Chang, Shenglong
关键词:Unmanned aerial vehicle; State space models; Wheat lodging area identification; Semantic segmentation
-
Recognition of maize seedling under weed disturbance using improved YOLOv5 algorithm
作者:Tang, Boyi;Zhao, Chunjiang;Tang, Boyi;Zhou, Jingping;Pan, Yuchun;Qu, Xuzhou;Cui, Yanglin;Liu, Chang;Li, Xuguang;Zhao, Chunjiang;Gu, Xiaohe;Li, Xuguang
关键词:Object detection; Maize seedlings; UAV RGB images; YOLOv5; Attention mechanism
-
Boosting Cost-Efficiency in Robotics: A Distributed Computing Approach for Harvesting Robots
作者:Xie, Feng;Xie, Feng;Li, Tao;Feng, Qingchun;Li, Tao;Feng, Qingchun;Chen, Liping;Zhao, Chunjiang;Zhao, Hui
关键词:5G network; computation allocation; edge computing; harvesting robot; visual system
-
A Comprehensive Evaluation of Monocular Depth Estimation Methods in Low-Altitude Forest Environment
作者:Jia, Jiwen;Kang, Junhua;Gao, Xiang;Zhang, Borui;Yang, Guijun;Chen, Lin;Yang, Guijun
关键词:monocular depth estimation; CNN; vision transformer; forest environment; comparative study
-
Genotyping Identification of Maize Based on Three-Dimensional Structural Phenotyping and Gaussian Fuzzy Clustering
作者:Xu, Bo;Zhao, Chunjiang;Xu, Bo;Zhao, Chunjiang;Yang, Guijun;Zhang, Yuan;Liu, Changbin;Feng, Haikuan;Yang, Xiaodong;Yang, Hao;Xu, Bo;Zhao, Chunjiang;Yang, Guijun;Zhang, Yuan;Liu, Changbin;Feng, Haikuan;Yang, Xiaodong;Yang, Hao
关键词:tassel; 3D phenotyping; TreeQSM; genotyping; clustering
-
High-throughput phenotyping techniques for forage: Status, bottleneck, and challenges
作者:Cheng, Tao;Zhang, Dongyan;Cheng, Tao;Wang, Zhaoming;Zhang, Dongyan;Zhang, Gan;Yuan, Feng;Liu, Yaling;Wang, Tianyi;Ren, Weibo;Zhao, Chunjiang
关键词:Forage; High-throughput phenotyping; Precision identification; Sensors; Artificial intelligence; Efficient breeding
-
Estimation of Leaf Chlorophyll Content of Maize from Hyperspectral Data Using E2D-COS Feature Selection, Deep Neural Network, and Transfer Learning
作者:Chen, Riqiang;Feng, Haikuan;Hu, Haitang;Chen, Riqiang;Ren, Lipeng;Yang, Guijun;Cheng, Zhida;Zhao, Dan;Zhang, Chengjian;Feng, Haikuan;Hu, Haitang;Yang, Hao;Chen, Riqiang;Zhang, Chengjian;Ren, Lipeng;Feng, Haikuan
关键词:maize; chlorophyll; radiative transfer model; feature selection; transfer learning



