Study on Monitoring SPAD Values for Multispatial Spatial Vertical Scales of Summer Maize Based on UAV Multispectral Remote Sensing

Author:

Ji Jiangtao12,Li Nana1,Cui Hongwei1ORCID,Li Yuchao1,Zhao Xinbo1,Zhang Haolei1,Ma Hao12

Affiliation:

1. College of Agricultural Equipment Engineering, Henan University of Science and Technology, Luoyang 471000, China

2. Longmen Laboratory, Luoyang 471000, China

Abstract

Rapid acquisition of chlorophyll content in maize leaves is of great significance for timely monitoring of maize plant health and guiding field management. In order to accurately detect the relative chlorophyll content of summer maize and study the responsiveness of vegetation indices to SPAD (soil and plant analyzer development) values of summer maize at different spatial vertical scales, this paper established a prediction model for SPAD values of summer maize leaves at different spatial scales based on UAV multispectral images. The experiment collected multispectral image data from summer maize at the jointing stage and selected eight vegetation indices. By using the sparrow search optimized kernel limit learning machine (SSA-KELM), the prediction models for canopy leaf (CL) SPADCL and ear leaf (EL) SPADEL were established, and a linear fitting analysis was conducted combining the measured SPADCL values and SPADEL values on the ground. The results showed that for SPADCL, the R2 of the linear fitting between the predicted values and measured values was 0.899, and the RMSE was 1.068. For SPADEL, the R2 of linear fitting between the predicted values and the measured values was 0.837, and the RMSE was 0.89. Compared with the model established by the partial least squares method (PLSR), it is found that the sparrow search optimized kernel limit learning machine (SSA-KELM) has more precise prediction results with better stability and adaptability for small sample prediction. The research results can provide technical support for remote sensing monitoring of the chlorophyll content of summer maize at different spatial scales.

Funder

a major science and technology project in Henan Province

Henan Province university science and technology innovation talent support plan

key specialized research and development breakthrough in Henan Province

Henan Province university young key teacher training project

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

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