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Jiating Li
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Comparison of object detection and patch-based classification deep learning models on mid-to late-season weed detection in UAV imagery
AN Veeranampalayam Sivakumar, J Li, S Scott, E Psota, A J. Jhala, ...
Remote Sensing 12 (13), 2136, 2020
1532020
Wheat height estimation using LiDAR in comparison to ultrasonic sensor and UAS
W Yuan, J Li, M Bhatta, Y Shi, PS Baenziger, Y Ge
Sensors 18 (11), 3731, 2018
1142018
Elucidating sorghum biomass, nitrogen and chlorophyll contents with spectral and morphological traits derived from unmanned aircraft system
J Li, Y Shi, AN Veeranampalayam-Sivakumar, DP Schachtman
Frontiers in plant science 9, 1406, 2018
972018
Prediction of egg storage time and yolk index based on electronic nose combined with chemometric methods
J Li, S Zhu, S Jiang, J Wang
LWT-Food Science and Technology 82, 369-376, 2017
572017
Principal variable selection to explain grain yield variation in winter wheat from features extracted from UAV imagery
J Li, AN Veeranampalayam-Sivakumar, M Bhatta, ND Garst, H Stoll, ...
Plant Methods 15, 1-13, 2019
412019
Automatic wheat lodging detection and mapping in aerial imagery to support high-throughput phenotyping and in-season crop management
B Zhao, J Li, PS Baenziger, V Belamkar, Y Ge, J Zhang, Y Shi
Agronomy 10 (11), 1762, 2020
252020
Evaluation of UAV-derived multimodal remote sensing data for biomass prediction and drought tolerance assessment in bioenergy sorghum
J Li, DP Schachtman, CF Creech, L Wang, Y Ge, Y Shi
The Crop Journal 10 (5), 1363-1375, 2022
232022
Improved chlorophyll and water content estimations at leaf level with a hybrid radiative transfer and machine learning model
J Li, NK Wijewardane, Y Ge, Y Shi
Computers and Electronics in Agriculture 206, 107669, 2023
202023
Improving model robustness for soybean iron deficiency chlorosis rating by unsupervised pre-training on unmanned aircraft system derived images
J Li, C Oswald, GL Graef, Y Shi
Computers and Electronics in Agriculture 175, 105557, 2020
122020
Positioning accuracy assessment of a commercial RTK UAS
B Zhao, J Li, L Wang, Y Shi
Autonomous Air and Ground Sensing Systems for Agricultural Optimization and …, 2020
102020
Investigating the potential of satellite imagery for high-throughput field phenotyping applications
S Sankaran, C Zhang, JP Hurst, A Marzougui, ...
Autonomous air and ground sensing systems for agricultural optimization and …, 2020
92020
Toward accurate estimating of crop leaf stomatal conductance combining thermal IR imaging, weather variables, and machine learning
L Zhao, L Wang, J Li, G Bai, Y Shi, Y Ge
Autonomous air and ground sensing systems for agricultural optimization and …, 2021
82021
Investigate the potential of UAS-based thermal infrared imagery for maize leaf area index estimation
L Wang, J Li, L Zhao, B Zhao, G Bai, Y Ge, Y Shi
Autonomous Air and Ground Sensing Systems for Agricultural Optimization and …, 2021
62021
Principal variable selection to explain grain yield variation in winter wheat from UAV-derived phenotypic traits
J Li, M Bhatta, ND Garst, H Stoll, AN Veeranampalayam-Sivakumar, ...
2019 ASABE Annual International Meeting, 1, 2019
12019
Integrating UAV hyperspectral data and radiative transfer model simulation to quantitatively estimate maize leaf and canopy nitrogen content
J Li, Y Ge, LA Puntel, DM Heeren, G Bai, GR Balboa, JA Gamon, ...
International Journal of Applied Earth Observation and Geoinformation 129 …, 2024
2024
Combining machine learning with a mechanistic model to estimate maize nitrogen content from UAV-acquired hyperspectral imagery
J Li, Y Ge, L Puntel, D Heeren, G Balboa, Y Shi
Autonomous Air and Ground Sensing Systems for Agricultural Optimization and …, 2023
2023
Uumanned Aerial Vehicle Data Analysis For High-throughput Plant Phenotyping
J Li
2019
Breeding for Increased Water Use Efficiency in Corn (Maize) Using a Low-altitude Unmanned Aircraft System
Y Shi, AN Veeranampalayam-Sivakumar, J Li, Y Ge, JC Schnable, ...
AGU Fall Meeting Abstracts 2017, B51A-1774, 2017
2017
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