Quantitative estimation of organ-scale phenotypic parameters of field crops through 3D modeling using extremely low altitude UAV images
文献类型: 外文期刊
第一作者: Zhu, Binglin
作者: Zhu, Binglin;Zhang, Yan;Sun, Yanguo;Shi, Yi;Zhu, Binglin;Ma, Yuntao;Guo, Yan
作者机构:
关键词: Field crops; UAV; Low flight altitude; Crust algorithm; Geometrical model; Phenotypic parameters
期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:8.3; 五年影响因子:8.3 )
ISSN: 0168-1699
年卷期: 2023 年 210 卷
页码:
收录情况: SCI
摘要: Plant phenotypic parameters provide key information in modern crop breeding. However, the rapid and accurate estimation of organ-scale phenotypic parameters remains a challenge. In this context, the present study proposed a novel methodology for the automatic quantification of the organ-scale parameters of field crops using the unmanned aerial vehicle (UAV) platform. First, a lightweight UAV was employed to capture the multi-view and high-resolution image sequences of field crops at an extremely-low flight altitude. Subsequently, based on these image sequences, point cloud reconstruction of the canopy was conducted. Next, the geometrical model of in-dividual leaves was reconstructed using the modified Crust algorithm and optimized by abnormal facet elimi-nation and leaf surface repair. Finally, individual leaf phenotypic parameters were calculated based on the reconstructed geometrical models. The method was evaluated by comparing the calculated parameters with actual measurements. The calculated values for leaf length, maximum leaf width, and leaf area were in good agreements with the measured values (maize: R2 > 0.97 for all parameters, RMSE for length, width, and leaf area was 2.6 cm, 0.4 cm, and 33.2 cm2, respectively; soybean: R2 > 0.85 for all parameters, RMSE for the counterparts was 0.3 cm, 0.5 cm, and 2.3 cm2, respectively; tobacco: R2 > 0.89 for all parameters, RMSE for the counterparts was 4.1 cm, 1.4 cm, and 42.6 cm2, respectively). The methodology based on extremely-low altitude UAV images has promising prospects in the crop breeding program for the automatic acquisition of fine organ-scale pa-rameters with high efficiency.
分类号:
- 相关文献
作者其他论文 更多>>
-
Optimum design of Chinese solar greenhouses for maximum energy availability
作者:Xu, Demin;Fei, Shuaipeng;Wang, Zhi;Ma, Yuntao;Zhu, Jinyu
关键词:Solar greenhouse; Energy saving; Horticulture; Energy economics; Optimum design; Sustainability
-
Remodeling of intestinal bacterial community and metabolome of Dezhou donkey induced by corn silage
作者:Sha, Yujie;Yu, Jiafeng;Liu, Jian;Sha, Yujie;Yu, Jiafeng;Liu, Jian;Wang, Huisong;Xia, Dong;Zhang, Yan;Wang, Huisong
关键词:Dezhou donkey; Bacterial community; Metabolome; Corn silage
-
Dual sampling linear regression ensemble to predict wheat yield across growing seasons with hyperspectral sensing
作者:Fei, Shuaipeng;Xiao, Shunfu;Ma, Yuntao;Fei, Shuaipeng;Xiao, Yonggui;Zhu, Jinyu
关键词:Yield prediction; Ensemble modeling; Breeding; Remote sensing; Canopy reflectance
-
Evaluation of Genetic Diversity and Agronomic Traits of Germplasm Resources of Stropharia rugosoannulata
作者:Gu, Miao;Gu, Miao;Chen, Qiang;Wu, Xiangli;Zhao, Mengran;Gao, Wei;Gu, Miao;Chen, Qiang;Wu, Xiangli;Zhao, Mengran;Gao, Wei;Zhang, Yan;Wang, Li;Zhao, Yongchang
关键词:Stropharia rugosoannulata; germplasm resources; SNP; fingerprint; agronomic trait characteristics
-
Genome-wide association studies identified OsTMF as a gene regulating rice seed germination under salt stress
作者:Liu, Lifeng;Ma, Yanling;Zhao, Heng;Guo, Lin;Liu, Chun-Ming;Liu, Lifeng;Guo, Yan;Liu, Chun-Ming;Liu, Chun-Ming;Liu, Chun-Ming
关键词:rice; seed germination; salt stress; GWAS; OsTMF
-
Functional characterization of sex pheromone receptors PflaOR29 and PflaOR44 involved in the chemoreception of a diurnal moth, Phauda flammans (Walker) (Lepidoptera: Phaudidae)
作者:Hu, Jin;Tan, Liusu;Wang, Xiaoyun;Zheng, Xialin;Zhang, Yan;Liu, Wei;Wang, Guirong;Zhang, Yan
关键词:Diurnal moth; Pheromone receptors; Drosophila empty neuron system; Sexual communication
-
Improvement of Winter Wheat Aboveground Biomass Estimation Using Digital Surface Model Information Extracted from Unmanned-Aerial-Vehicle-Based Multispectral Images
作者:Guo, Yan;He, Jia;Zhang, Huifang;Wei, Panpan;Jing, Yuhang;Yang, Xiuzhong;Zhang, Yan;Wang, Laigang;Zheng, Guoqing;Guo, Yan;He, Jia;Zhang, Huifang;Wei, Panpan;Jing, Yuhang;Yang, Xiuzhong;Zhang, Yan;Zheng, Guoqing;Guo, Yan;Yang, Xiuzhong;Zhang, Yan;Zheng, Guoqing;Shi, Zhou;Wang, Laigang
关键词:aboveground biomass; UAV; height; transferability; BP neural network; machine learning