Welcome To  NEM   

Journals(Abstract)

Research Progress on the Early Identification of Diseases and Pests of Specific High-value Crops by Micro-drones Equipped with Multispectral/Hyperspectral Sensors and Edge AI Technology

Xie Mohan

Detroit Institute of Green Industry, Hubei university of technology

Abstract:

In response to the demand for early warning of pests and diseases of high-value crops in precision agriculture, this paper reviews the research progress of integrating multispectral/hyperspectral sensors with edge AI on micro unmanned aerial vehicle platforms. Key technologies such as spectral acquisition, radiometric/geometric correction and denoising, multi-source data fusion, edge-side lightweight models and compressed deployment, edge hardware implementation, and edge-cloud collaborative architecture under payload constraints are summarized. The paper further summarizes the main bottlenecks of existing work in terms of robustness and cross-regional generalization under complex field noise, trade-offs between diagnostic accuracy and real-time energy consumption, and collaborative scheduling and continuous update mechanisms, and propose future directions for standardized data and evaluation, sensor-algorithm collaborative design, interpretable and transferable learning, and low-cost large-scale applications.


Key Words:

micro drones; multispectral/hyperspectral; edge AI; early identification of pests and diseases; high-value crops

技术支持:人人站CMS
Powered by RRZCMS