Follow
Jiating Li
Jiating Li
Assitant Professor | Biosystems Engineering | University of Manitoba
Verified email at umanitoba.ca
Title
Cited by
Cited by
Year
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
1662020
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
1262018
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
1092018
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
692017
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
462019
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
302022
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
282023
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
272020
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
152020
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
122020
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
112020
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
92021
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
72021
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
52024
Combining visual intelligence and social-physical urban features facilitates fine-scale seasonality characterization of urban thermal environments
J Yu, Q Hu, J Li
Building and Environment 266, 112088, 2024
12024
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
12023
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
Devising optimized maize nitrogen stress indices in complex field conditions from UAV hyperspectral imagery
J Li, Y Ge, LA Puntel, DM Heeren, G Bai, GR Balboa, JA Gamon, ...
Precision Agriculture 26 (1), 3, 2025
2025
Towards Robust Quantification of Maize Nitrogen Status Under Varied Soil Water Levels Using UAV-Based Hyperspectral Imaging
J Li
The University of Nebraska-Lincoln, 2023
2023
Uumanned Aerial Vehicle Data Analysis For High-throughput Plant Phenotyping
J Li
2019
The system can't perform the operation now. Try again later.
Articles 1–20