Mr. Zhongzhong Niu | Plant Phenotyping Award | Best Researcher Award
Mr. Zhongzhong Niu, Purdue University, United States
Zhongzhong Niu is a doctoral candidate at Purdue University’s College of Engineering, where he focuses on spatial-spectral analysis for high-dimensional plant images to detect chemical injuries and diseases. He holds a Master’s degree in Agricultural Engineering from Purdue and a Bachelor’s degree in the same field through a joint program between Purdue University and China Agricultural University. With extensive experience as a Research Assistant, Zhongzhong has led cutting-edge machine learning projects for hyperspectral imaging and plant disease detection. His work, supported by prominent organizations such as FMC Corporation and Sumitomo Chemical Co., Ltd., has significantly advanced the application of machine learning in smart agriculture. He has published multiple peer-reviewed articles and secured a U.S. patent for innovations in environmental monitoring technology. His technical expertise includes Python, MATLAB, hyperspectral imaging, cloud computing, and big data analytics, making him a key contributor to modern agricultural practices.
Professional Profile:
Summary of Suitability for Best Researcher Award
Zhongzhong Niu holds a solid educational foundation with a Bachelor’s degree in Agricultural Engineering from a joint program between Purdue University and China Agricultural University. He advanced his studies at Purdue University, obtaining a Master’s degree in Agricultural Engineering and is currently pursuing a Ph.D. in the College of Engineering. His dissertation focuses on “Spatial-Spectral Analysis for High-Dimensional Plant Images for Chemical Injury and Disease Detection,” indicating a deep specialization in hyperspectral imaging and its applications in agriculture.
Publication top Notes:
Early Detection of Dicamba and 2,4-D Herbicide Drifting Injuries on Soybean with a New Spatial–Spectral Algorithm Based on LeafSpec, an Accurate Touch-Based Hyperspectral Leaf Scanner
Hyperspectral Analysis for Discriminating Herbicide Site of Action: A Novel Approach for Accelerating Herbicide Research