Register      Login
Functional Plant Biology Functional Plant Biology Society
Plant function and evolutionary biology

Articles citing this paper

Comparison of ground cover estimates from experiment plots in cotton, sorghum and sugarcane based on images and ortho-mosaics captured by UAV

Tao Duan A B , Bangyou Zheng A , Wei Guo C , Seishi Ninomiya C , Yan Guo B and Scott C. Chapman A D E
+ Author Affiliations
- Author Affiliations

A CSIRO Agriculture and Food, Queensland Biosciences Precinct, 306 Carmody Road, St Lucia, Qld 4067, Australia.

B College of Resources and Environmental Sciences, China Agricultural University, Beijing, 100 193, China.

C Institute for Sustainable Agro-ecosystem Services, The University of Tokyo, Tokyo 188-0002, Japan.

D Queensland Alliance for Agriculture and Food Innovation, The University of Queensland, St Lucia, Qld 4072, Australia.

E Corresponding author. Email: scott.chapman@csiro.au

Functional Plant Biology 44(1) 169-183 https://doi.org/10.1071/FP16123
Submitted: 31 March 2016  Accepted: 6 October 2016   Published: 24 November 2016



88 articles found in Crossref database.

Utilizing Spectral, Structural and Textural Features for Estimating Oat Above-Ground Biomass Using UAV-Based Multispectral Data and Machine Learning
Dhakal Rakshya, Maimaitijiang Maitiniyazi, Chang Jiyul, Caffe Melanie
Sensors. 2023 23(24). p.9708
Dynamic plant height QTL revealed in maize through remote sensing phenotyping using a high-throughput unmanned aerial vehicle (UAV)
Wang Xiaqing, Zhang Ruyang, Song Wei, Han Liang, Liu Xiaolei, Sun Xuan, Luo Meijie, Chen Kuan, Zhang Yunxia, Yang Hao, Yang Guijun, Zhao Yanxin, Zhao Jiuran
Scientific Reports. 2019 9(1).
Unmanned Aerial Vehicle Remote Sensing for Field-Based Crop Phenotyping: Current Status and Perspectives
Yang Guijun, Liu Jiangang, Zhao Chunjiang, Li Zhenhong, Huang Yanbo, Yu Haiyang, Xu Bo, Yang Xiaodong, Zhu Dongmei, Zhang Xiaoyan, Zhang Ruyang, Feng Haikuan, Zhao Xiaoqing, Li Zhenhai, Li Heli, Yang Hao
Frontiers in Plant Science. 2017 8
Extracting leaf area index using viewing geometry effects—A new perspective on high-resolution unmanned aerial system photography
Roth Lukas, Aasen Helge, Walter Achim, Liebisch Frank
ISPRS Journal of Photogrammetry and Remote Sensing. 2018 141 p.161
Testing Automated Complex for Assessing Agrotechnical Parameters of Agricultural Crops Based on Photographs Taken by an Unmanned Aerial Vehicle (UAV) in a Mock-Up of a Real Field
2024 26th International Conference on Digital Signal Processing and its Applications (DSPA) (2024)
Poleshchenko Dmitriy, Mikhailov Ilia, Petrov Vladislav, Stankevich Vladislav
Yield estimation in cotton using UAV-based multi-sensor imagery
Feng Aijing, Zhou Jianfeng, Vories Earl D., Sudduth Kenneth A., Zhang Meina
Biosystems Engineering. 2020 193 p.101
Coupling of machine learning methods to improve estimation of ground coverage from unmanned aerial vehicle (UAV) imagery for high-throughput phenotyping of crops
Hu Pengcheng, Chapman Scott C., Zheng Bangyou
Functional Plant Biology. 2021 48(8). p.766
Prospects for Measurement of Dry Matter Yield in Forage Breeding Programs Using Sensor Technologies
Gebremedhin Alem, Badenhorst Pieter E., Wang Junping, Spangenberg German C., Smith Kevin F.
Agronomy. 2019 9(2). p.65
Ground Covering Characteristics of Sugarcanes Using High-angle Images and Their Relationship with Growth Destructive Sampling
Pringgani Ayuning Mawar, Khonghinta Jidapa, Gonkhamdee Santimaitree, Songsri Patcharin, Jongrungkl Nakorn
Asian Journal of Plant Sciences. 2023 22(3). p.434
Utilisation of unmanned aerial vehicle imagery to assess growth parameters in mungbean (Vigna radiata (L.) Wilczek)
Xiong Yiyi, Chiau Lucas Mauro Rogerio, Wenham Kylie, Collins Marisa, Chapman Scott C., Dreccer Fernanda
Crop & Pasture Science. 2023 75(1).
The estimation of crop emergence in potatoes by UAV RGB imagery
Li Bo, Xu Xiangming, Han Jiwan, Zhang Li, Bian Chunsong, Jin Liping, Liu Jiangang
Plant Methods. 2019 15(1).
Estimation and evaluation of paddy rice canopy characteristics based on images from UAV and ground camera
WANG Ze, ZHOU Qin-Yang, LIU Cong, MU Yue, GUO Wei, DING Yan-Feng, NINOMIYA Seishi
Acta Agronomica Sinica. 2022 48(5). p.1248
Detecting Sorghum Plant and Head Features from Multispectral UAV Imagery
Zhao Yan, Zheng Bangyou, Chapman Scott C., Laws Kenneth, George-Jaeggli Barbara, Hammer Graeme L., Jordan David R., Potgieter Andries B.
Plant Phenomics. 2021 2021
Aerial phenotyping for sugarcane yield and drought tolerance
Hoffman Natalie, Singels Abraham, Joshi Shailesh
Field Crops Research. 2024 308 p.109275
High-quality images and data augmentation based on inverse projection transformation significantly improve the estimation accuracy of biomass and leaf area index
Che Yingpu, Wang Qing, Xie Ziwen, Li Shilin, Zhu Jinyu, Li Baoguo, Ma Yuntao
Computers and Electronics in Agriculture. 2023 212 p.108144
High-throughput phenotyping in cotton: a review
PABUAYON Irish Lorraine B., SUN Yazhou, GUO Wenxuan, RITCHIE Glen L.
Journal of Cotton Research. 2019 2(1).
Haplotype analysis from unmanned aerial vehicle imagery of rice MAGIC population for the trait dissection of biomass and plant architecture
Ogawa Daisuke, Sakamoto Toshihiro, Tsunematsu Hiroshi, Kanno Noriko, Nonoue Yasunori, Yonemaru Jun-ichi, Lawson Tracy
Journal of Experimental Botany. 2021 72(7). p.2371
The Application of UAV-Based Hyperspectral Imaging to Estimate Crop Traits in Maize Inbred Lines
Shu Meiyan, Shen Mengyuan, Zuo Jinyu, Yin Pengfei, Wang Min, Xie Ziwen, Tang Jihua, Wang Ruili, Li Baoguo, Yang Xiaohong, Ma Yuntao
Plant Phenomics. 2021 2021
High-Throughput Plant Phenotyping Platform (HT3P) as a Novel Tool for Estimating Agronomic Traits From the Lab to the Field
Li Daoliang, Quan Chaoqun, Song Zhaoyang, Li Xiang, Yu Guanghui, Li Cheng, Muhammad Akhter
Frontiers in Bioengineering and Biotechnology. 2021 8
Estimating Wheat Coverage Using Multispectral Images Collected by Unmanned Aerial Vehicles and a New Sensor
2018 7th International Conference on Agro-geoinformatics (Agro-geoinformatics) (2018)
Liu Jinran, Chen Pengfei, Xu Xingang
A Weakly Supervised Deep Learning Framework for Sorghum Head Detection and Counting
Ghosal Sambuddha, Zheng Bangyou, Chapman Scott C., Potgieter Andries B., Jordan David R., Wang Xuemin, Singh Asheesh K., Singh Arti, Hirafuji Masayuki, Ninomiya Seishi, Ganapathysubramanian Baskar, Sarkar Soumik, Guo Wei
Plant Phenomics. 2019 2019
Easy MPE: Extraction of Quality Microplot Images for UAV-Based High-Throughput Field Phenotyping
Tresch Léa, Mu Yue, Itoh Atsushi, Kaga Akito, Taguchi Kazunori, Hirafuji Masayuki, Ninomiya Seishi, Guo Wei
Plant Phenomics. 2019 2019
Estimation of plant height using a high throughput phenotyping platform based on unmanned aerial vehicle and self-calibration: Example for sorghum breeding
Hu Pengcheng, Chapman Scott C., Wang Xuemin, Potgieter Andries, Duan Tao, Jordan David, Guo Yan, Zheng Bangyou
European Journal of Agronomy. 2018 95 p.24
A rapid monitoring of NDVI across the wheat growth cycle for grain yield prediction using a multi-spectral UAV platform
Hassan Muhammad Adeel, Yang Mengjiao, Rasheed Awais, Yang Guijun, Reynolds Matthew, Xia Xianchun, Xiao Yonggui, He Zhonghu
Plant Science. 2019 282 p.95
Estimation of maize plant height and leaf area index dynamics using an unmanned aerial vehicle with oblique and nadir photography
Che Yingpu, Wang Qing, Xie Ziwen, Zhou Long, Li Shuangwei, Hui Fang, Wang Xiqing, Li Baoguo, Ma Yuntao
Annals of Botany. 2020 126(4). p.765
Canopy Roughness: A New Phenotypic Trait to Estimate Aboveground Biomass from Unmanned Aerial System
Herrero-Huerta Monica, Bucksch Alexander, Puttonen Eetu, Rainey Katy M.
Plant Phenomics. 2020 2020
Determining Crop Growth Dynamics in Sorghum Breeding Trials Through Remote and Proximal Sensing Technologies
IGARSS 2018 - 2018 IEEE International Geoscience and Remote Sensing Symposium (2018)
Potgieter Andries B., Watson James, Eldridge Mark, Laws Kenneth, George-Jaeggli Barbara, Hunt Colleen, Borrell Andrew, Mace Emma, Chapman Scott C., Jordan David R., Hammer Graeme L.
Land-based crop phenotyping by image analysis: consistent canopy characterization from inconsistent field illumination
Chopin Joshua, Kumar Pankaj, Miklavcic Stanley J.
Plant Methods. 2018 14(1).
Assessing radiometric calibration methods for multispectral UAV imagery and the influence of illumination, flight altitude and flight time on reflectance, vegetation index and inversion of winter wheat AGB and LAI
Zhu Honglei, Huang Yanwei, An Zhaokang, Zhang Han, Han Yongyue, Zhao Zihui, Li Feifan, Zhang Chan, Hou Cuicui
Computers and Electronics in Agriculture. 2024 219 p.108821
Elucidating Sorghum Biomass, Nitrogen and Chlorophyll Contents With Spectral and Morphological Traits Derived From Unmanned Aircraft System
Li Jiating, Shi Yeyin, Veeranampalayam-Sivakumar Arun-Narenthiran, Schachtman Daniel P.
Frontiers in Plant Science. 2018 9
UAVs technology for the development of GUI based application for precision agriculture and environmental research
Srivastava Kshitij, Bhutoria Aman Jain, Sharma Jyoti K., Sinha Aakash, Pandey Prem Chandra
Remote Sensing Applications: Society and Environment. 2019 16 p.100258
Clustering Field-Based Maize Phenotyping of Plant-Height Growth and Canopy Spectral Dynamics Using a UAV Remote-Sensing Approach
Han Liang, Yang Guijun, Yang Hao, Xu Bo, Li Zhenhai, Yang Xiaodong
Frontiers in Plant Science. 2018 9
Quantification of light interception within image-based 3-D reconstruction of sole and intercropped canopies over the entire growth season
Zhu Binglin, Liu Fusang, Xie Ziwen, Guo Yan, Li Baoguo, Ma Yuntao
Annals of Botany. 2020 126(4). p.701
Estimating Above-Ground Biomass of Maize Using Features Derived from UAV-Based RGB Imagery
Niu Yaxiao, Zhang Liyuan, Zhang Huihui, Han Wenting, Peng Xingshuo
Remote Sensing. 2019 11(11). p.1261
Ecological Restoration of Soil Plant System by Earthworms based on Image Segmentation Algorithm
2023 Second International Conference On Smart Technologies For Smart Nation (SmartTechCon) (2023)
Mustare Narendra B, Whitin Priscilla, Nisha B., Galande Bhagwati G., Ganapathy N Bala Sundara, Londhe Aoudumber D.
A Review on the Use of Unmanned Aerial Vehicles and Imaging Sensors for Monitoring and Assessing Plant Stresses
Barbedo Jayme
Drones. 2019 3(2). p.40
Prediction of crop coefficients from fraction of ground cover and height. Background and validation using ground and remote sensing data
Pereira L.S., Paredes P., Melton F., Johnson L., Wang T., López-Urrea R., Cancela J.J., Allen R.G.
Agricultural Water Management. 2020 241 p.106197
Integrating spectral data and phylogeographic patterns to study plant genetic variation: a review
Zhang Jingxue, He Yuhong, Liu Jiangui, Fan Jibiao, Shang Jiali, Yan Xuebing
Grass Research. 2024 4(1). p.0
Quantification of Biophysical Parameters and Economic Yield in Cotton and Rice Using Drone Technology
Pazhanivelan Sellaperumal, Kumaraperumal Ramalingam, Shanmugapriya P., Sudarmanian N. S., Sivamurugan A. P., Satheesh S.
Agriculture. 2023 13(9). p.1668
Evaluation of macadamia felted coccid (Hemiptera: Eriococcidae) damage and cultivar susceptibility using imagery from a small unmanned aerial vehicle (sUAV), combined with ground truthing
Pulakkatu‐thodi Ishakh, Dzurisin Jason, Follett Peter
Pest Management Science. 2022 78(11). p.4533
A Deep Learning Semantic Segmentation-Based Approach for Field-Level Sorghum Panicle Counting
Malambo Lonesome, Popescu Sorin, Ku Nian-Wei, Rooney William, Zhou Tan, Moore Samuel
Remote Sensing. 2019 11(24). p.2939
A method of yield monitoring based on neural networks using deep learning
Gapon Nikolay, Azhinov Alexander, Zhdanova Marina, Meskhi Besarion, Rudoy Dmitry, Olshevskaya Anastasiya, Odabashyan Mary, Vershinina Anna, Marchenko Sergey, Muratov A., Lygina O.
E3S Web of Conferences. 2023 462 p.02016
Plant phenotyping: increasing throughput and precision at multiple scales
Hawkesford Malcolm J., Lorence Argelia
Functional Plant Biology. 2017 44(1). p.v
Large-scale field phenotyping using backpack LiDAR and CropQuant-3D to measure structural variation in wheat
Zhu Yulei, Sun Gang, Ding Guohui, Zhou Jie, Wen Mingxing, Jin Shichao, Zhao Qiang, Colmer Joshua, Ding Yanfeng, Ober Eric S., Zhou Ji
Plant Physiology. 2021 187(2). p.716
An Exploration of Deep-Learning Based Phenotypic Analysis to Detect Spike Regions in Field Conditions for UK Bread Wheat
Alkhudaydi Tahani, Reynolds Daniel, Griffiths Simon, Zhou Ji, de la Iglesia Beatriz
Plant Phenomics. 2019 2019
Designing a Safe Drone with the Coanda Effect Based on a Self-Organizing Map
2018 IEEE International Conference on Systems, Man, and Cybernetics (SMC) (2018)
Shimomura Ryo, Kawai Shin, Nobuhara Hajime
UAVs to Monitor and Manage Sugarcane: Integrative Review
Barbosa Júnior Marcelo Rodrigues, Moreira Bruno Rafael de Almeida, Brito Filho Armando Lopes de, Tedesco Danilo, Shiratsuchi Luciano Shozo, Silva Rouverson Pereira da
Agronomy. 2022 12(3). p.661
Unmanned aerial vehicle images in the machine learning for agave detection
Escobar-Flores Jonathan Gabriel, Sandoval Sarahi, Gámiz-Romero Eduardo
Environmental Science and Pollution Research. 2022 29(41). p.61662
Assessment of cotton and sorghum stand establishment using UAV‐based multispectral and DSLR‐based RGB imagery
Dhakal Madhav, Huang Yanbo, Locke Martin A., Reddy Krishna N., Moore Matthew T, Krutz L. Jason, Gholson Drew, Bajgain Rajen
Agrosystems, Geosciences & Environment. 2022 5(2).
Combining Color Indices and Textures of UAV-Based Digital Imagery for Rice LAI Estimation
Li Songyang, Yuan Fei, Ata-UI-Karim Syed Tahir, Zheng Hengbiao, Cheng Tao, Liu Xiaojun, Tian Yongchao, Zhu Yan, Cao Weixing, Cao Qiang
Remote Sensing. 2019 11(15). p.1763
Deriving Aerodynamic Roughness Length at Ultra-High Resolution in Agricultural Areas Using UAV-Borne LiDAR
Trepekli Katerina, Friborg Thomas
Remote Sensing. 2021 13(17). p.3538
Signals in the Soil (2020)
Salam Abdul, Raza Usman
Comparison of Modelling Strategies to Estimate Phenotypic Values from an Unmanned Aerial Vehicle with Spectral and Temporal Vegetation Indexes
Hu Pengcheng, Chapman Scott C., Jin Huidong, Guo Yan, Zheng Bangyou
Remote Sensing. 2021 13(14). p.2827
Dynamic monitoring of NDVI in wheat agronomy and breeding trials using an unmanned aerial vehicle
Duan T., Chapman S.C., Guo Y., Zheng B.
Field Crops Research. 2017 210 p.71
Improving the accuracy of cotton seedling emergence rate estimation by fusing UAV-based multispectral vegetation indices
Li Tiansheng, Wang Haijiang, Cui Jing, Wang Weiju, Li Wenruiyu, Jiang Menghao, Shi Xiaoyan, Song Jianghui, Wang Jingang, Lv Xin, Zhang Lifu
Frontiers in Plant Science. 2024 15
Proposed Safety Drone for Agricultural Use and Optimization of Its Propulsion by Self-Organizing Map
Shimomura Ryo, Nobuhara Hajime
Agricultural Information Research. 2018 27(4). p.83
Improving the estimation of fractional vegetation cover from UAV RGB imagery by colour unmixing
Yan Guangjian, Li Linyuan, Coy André, Mu Xihan, Chen Shengbo, Xie Donghui, Zhang Wuming, Shen Qingfeng, Zhou Hongmin
ISPRS Journal of Photogrammetry and Remote Sensing. 2019 158 p.23
Fine-scale prediction of biomass and leaf nitrogen content in sugarcane using UAV LiDAR and multispectral imaging
Shendryk Yuri, Sofonia Jeremy, Garrard Robert, Rist Yannik, Skocaj Danielle, Thorburn Peter
International Journal of Applied Earth Observation and Geoinformation. 2020 92 p.102177
Evaluating unoccupied aerial systems (UAS) imagery as an alternative tool towards cotton-based management zones
Rouze Gregory, Neely Haly, Morgan Cristine, Kustas William, Wiethorn Matt
Precision Agriculture. 2021 22(6). p.1861
McGET: A rapid image-based method to determine the morphological characteristics of gravels on the Gobi desert surface
Mu Yue, Wang Feng, Zheng Bangyou, Guo Wei, Feng Yiming
Geomorphology. 2018 304 p.89
Pixel size of aerial imagery constrains the applications of unmanned aerial vehicle in crop breeding
Hu Pengcheng, Guo Wei, Chapman Scott C., Guo Yan, Zheng Bangyou
ISPRS Journal of Photogrammetry and Remote Sensing. 2019 154 p.1
Evaluation of Cotton Emergence Using UAV-Based Narrow-Band Spectral Imagery with Customized Image Alignment and Stitching Algorithms
Feng Aijing, Zhou Jianfeng, Vories Earl, Sudduth Kenneth A.
Remote Sensing. 2020 12(11). p.1764
High-throughput field crop phenotyping: current status and challenges
Ninomiya Seishi
Breeding Science. 2022 72(1). p.3
Integrating a crop growth model and radiative transfer model to improve estimation of crop traits based on deep learning
Chen Qiaomin, Zheng Bangyou, Chen Tong, Chapman Scott C, Rebetzke Greg
Journal of Experimental Botany. 2022 73(19). p.6558
Impact of Varying Light and Dew on Ground Cover Estimates from Active NDVI, RGB, and LiDAR
Deery David M., Smith David J., Davy Robert, Jimenez-Berni Jose A., Rebetzke Greg J., James Richard A.
Plant Phenomics. 2021 2021
Drone-Based Harvest Data Prediction Can Reduce On-Farm Food Loss and Improve Farmer Income
Wang Haozhou, Li Tang, Nishida Erika, Kato Yoichiro, Fukano Yuya, Guo Wei
Plant Phenomics. 2023 5
Genebank Phenomics: A Strategic Approach to Enhance Value and Utilization of Crop Germplasm
Nguyen Giao N., Norton Sally L.
Plants. 2020 9(7). p.817
Fallow replacement cover crops impact soil water and nitrogen dynamics in a semi-arid sub-tropical environment
Garba Ismail Ibrahim, Fay Daniel, Apriani Reni, Yusof Dk Yusrina Pg, Chu Danqing, Williams Alwyn
Agriculture, Ecosystems & Environment. 2022 338 p.108052
Aerial Imagery Analysis – Quantifying Appearance and Number of Sorghum Heads for Applications in Breeding and Agronomy
Guo Wei, Zheng Bangyou, Potgieter Andries B., Diot Julien, Watanabe Kakeru, Noshita Koji, Jordan David R., Wang Xuemin, Watson James, Ninomiya Seishi, Chapman Scott C.
Frontiers in Plant Science. 2018 9
New Orthophoto Generation Strategies from UAV and Ground Remote Sensing Platforms for High-Throughput Phenotyping
Lin Yi-Chun, Zhou Tian, Wang Taojun, Crawford Melba, Habib Ayman
Remote Sensing. 2021 13(5). p.860
Comparison of UAS-Based Structure-from-Motion and LiDAR for Structural Characterization of Short Broadacre Crops
Zhang Fei, Hassanzadeh Amirhossein, Kikkert Julie, Pethybridge Sarah Jane, van Aardt Jan
Remote Sensing. 2021 13(19). p.3975
Spatial pattern analysis of Haloxylon ammodendron using UAV imagery - A case study in the Gurbantunggut Desert
Xu Jia, Gu Haibin, Meng Qingmin, Cheng Junhui, Liu Yunhua, Jiang Ping'an, Sheng Jiandong, Deng Jiang, Bai Xue
International Journal of Applied Earth Observation and Geoinformation. 2019 83 p.101891
Combining computer vision and deep learning to enable ultra-scale aerial phenotyping and precision agriculture: A case study of lettuce production
Bauer Alan, Bostrom Aaron George, Ball Joshua, Applegate Christopher, Cheng Tao, Laycock Stephen, Rojas Sergio Moreno, Kirwan Jacob, Zhou Ji
Horticulture Research. 2019 6(1).
An Automatic Field Plot Extraction Method From Aerial Orthomosaic Images
Khan Zohaib, Miklavcic Stanley J.
Frontiers in Plant Science. 2019 10
Panoramic reconstruction of central green belt of different levels of highway based on UAV platform
2019 5th International Conference on Transportation Information and Safety (ICTIS) (2019)
Duan Tao, Sang Lingzhi, Hu Pengcheng, Liu Ronggao, Wang Lin
EasyIDP: A Python Package for Intermediate Data Processing in UAV-Based Plant Phenotyping
Wang Haozhou, Duan Yulin, Shi Yun, Kato Yoichiro, Ninomiya Seishi, Guo Wei
Remote Sensing. 2021 13(13). p.2622
Automatic Microplot Localization Using UAV Images and a Hierarchical Image-Based Optimization Method
Mardanisamani Sara, Ayalew Tewodros W., Badhon Minhajul Arifin, Khan Nazifa Azam, Hasnat Gazi, Duddu Hema, Shirtliffe Steve, Vail Sally, Stavness Ian, Eramian Mark
Plant Phenomics. 2021 2021
Review of ground and aerial methods for vegetation cover fraction (fCover) and related quantities estimation: definitions, advances, challenges, and future perspectives
Li Linyuan, Mu Xihan, Jiang Hailan, Chianucci Francesco, Hu Ronghai, Song Wanjuan, Qi Jianbo, Liu Shouyang, Zhou Jiaxin, Chen Ling, Huang Huaguo, Yan Guangjian
ISPRS Journal of Photogrammetry and Remote Sensing. 2023 199 p.133
Segmentation of vegetation and microplots in aerial agriculture images: A survey
Mardanisamani Sara, Eramian Mark
The Plant Phenome Journal. 2022 5(1).
Incorporation of Unmanned Aerial Vehicle (UAV) Point Cloud Products into Remote Sensing Evapotranspiration Models
Aboutalebi Mahyar, Torres-Rua Alfonso F., McKee Mac, Kustas William P., Nieto Hector, Alsina Maria Mar, White Alex, Prueger John H., McKee Lynn, Alfieri Joseph, Hipps Lawrence, Coopmans Calvin, Dokoozlian Nick
Remote Sensing. 2019 12(1). p.50
Plant Counting of Cotton from UAS Imagery Using Deep Learning-Based Object Detection Framework
Oh Sungchan, Chang Anjin, Ashapure Akash, Jung Jinha, Dube Nothabo, Maeda Murilo, Gonzalez Daniel, Landivar Juan
Remote Sensing. 2020 12(18). p.2981
Estimating boreal forest ground cover vegetation composition from nadir photographs using deep convolutional neural networks
Cameron Hilary A., Panda Pranoy, Barczyk Martin, Beverly Jennifer L.
Ecological Informatics. 2022 69 p.101658
An image analysis pipeline for automated classification of imaging light conditions and for quantification of wheat canopy cover time series in field phenotyping
Yu Kang, Kirchgessner Norbert, Grieder Christoph, Walter Achim, Hund Andreas
Plant Methods. 2017 13(1).
Estimation of direct-seeded guayule cover, crop coefficient, and yield using UAS-based multispectral and RGB data
Elshikha Diaa Eldin M., Hunsaker Douglas J., Waller Peter M., Thorp Kelly R., Dierig David, Wang Guangyao, Cruz Von Mark V., Katterman Matthew E., Bronson Kevin F., Wall Gerard W., Thompson Alison L.
Agricultural Water Management. 2022 265 p.107540
A review of UAV platforms, sensors, and applications for monitoring of sugarcane crops
Amarasingam Narmilan, Ashan Salgadoe Arachchige Surantha, Powell Kevin, Gonzalez Luis Felipe, Natarajan Sijesh
Remote Sensing Applications: Society and Environment. 2022 26 p.100712
EasyPCC: Benchmark Datasets and Tools for High-Throughput Measurement of the Plant Canopy Coverage Ratio under Field Conditions
Guo Wei, Zheng Bangyou, Duan Tao, Fukatsu Tokihiro, Chapman Scott, Ninomiya Seishi
Sensors. 2017 17(4). p.798
Using Hybrid Artificial Intelligence and Evolutionary Optimization Algorithms for Estimating Soybean Yield and Fresh Biomass Using Hyperspectral Vegetation Indices
Yoosefzadeh-Najafabadi Mohsen, Tulpan Dan, Eskandari Milad
Remote Sensing. 2021 13(13). p.2555
Quantitative Identification of Maize Lodging-Causing Feature Factors Using Unmanned Aerial Vehicle Images and a Nomogram Computation
Han Liang, Yang Guijun, Feng Haikuan, Zhou Chengquan, Yang Hao, Xu Bo, Li Zhenhai, Yang Xiaodong
Remote Sensing. 2018 10(10). p.1528

Committee on Publication Ethics


Abstract Supplementary MaterialSupplementary Material (70 KB) Export Citation Get Permission