Multi-temporal UAV Imaging-Based Mapping of Chlorophyll Content in Potato Crop

Abstract

Spectral indices based on unmanned aerial vehicle (UAV) multispectral images combined with machine learning algorithms can more effectively assess chlorophyll content in plants, which plays a crucial role in plant nutrition diagnosis, yield estimation and a better understanding of plant and environment interactions. Therefore, the aim of this study was to use UAV-based spectral indices deriving from UAV-based multispectral images as inputs in different machine learning models to predict canopy chlorophyll content of potato crops. The relative chlorophyll content was obtained using a SPAD chlorophyll meter. Random Forest (RF), support vector regression (SVR), partial least squares regression (PLSR) and ridge regression (RR) were employed to predict the chlorophyll content. The results showed that RF model was the best performing algorithm with an R2 of 0.76, Root Mean Square Error (RMSE) of 1.97. Both RF and SVR models showed much better accuracy than PLSR and RR models. This study suggests that the best models, RF model, allow to map the spatial variation in chlorophyll content of plant canopy using the UAV multispectral images at different growth stages.

Type
Publication
PFG – Journal of Photogrammetry, Remote Sensing and Geoinformation Science

Hang Yin, Weili Huang, Fei Li, Haibo Yang, Yuan Li, Yuncai Hu, & Kang Yu (2023). Multi-temporal UAV Imaging-Based Mapping of Chlorophyll Content in Potato Crop. PFG – Journal of Photogrammetry, Remote Sensing and Geoinformation Science, 91(2): 91–106.

Dr. Haibo Yang
Dr. Haibo Yang
Lecturer (current)

My research interests include hyperspectral remote sensing, precision agriculture, and nitrogen nutrient management.

Prof. Dr. Kang Yu
Prof. Dr. Kang Yu
Professor of Precision Agriculture

My research interests include precision crop farming, hyperspectral remote sensing, and AI in agriculture.