Chlorophyll content in plant leaves is an essential indicator of the growth condition and the fertilization management effect of naked barley crops. The soil plant analysis development (SPAD) values strongly correlate with leaf chlorophyll contents. Unmanned Aerial Vehicles (UAV) can provide an efficient way to retrieve SPAD values on a relatively large scale with a high temporal resolution. But the UAV mounted with high-cost multispectral or hyperspectral sensors may be a tremendous economic burden for smallholder farmers. To overcome this shortcoming, we investigated the potential of UAV mounted with a commercial digital camera for estimating the SPAD values of naked barley leaves. We related 21 color-based vegetation indices (VIs) calculated from UAV images acquired from two flight heights (6.0 m and 50.0 m above ground level) in four different growth stages with SPAD values. Our results indicated that vegetation extraction and naked barley ears mask could improve the correlation between image-calculated vegetation indices and SPAD values. The VIs of ‘L*,’ ‘b*,’ ‘G − B’ and ‘2G − R − B’ showed significant correlations with SPAD values of naked barley leaves at both flight heights. The validation of the regression model showed that the index of ‘G-B’ could be regarded as the most robust vegetation index for predicting the SPAD values of naked barley leaves for different images and different flight heights. Our study demonstrated that the UAV mounted with a commercial camera has great potentiality in retrieving SPAD values of naked barley leaves under unstable photography conditions. It is significant for farmers to take advantage of the cheap measurement system to monitor crops.
[1]
Taya Cristo Parreiras,et al.
Using unmanned aerial vehicle and machine learning algorithm to monitor leaf nitrogen in coffee
,
2020
.
[2]
Chengyao Jiang,et al.
A correlation analysis on chlorophyll content and SPAD value in tomato leaves
,
2017
.
[3]
Ojs Jki,et al.
Growth stages of mono-and dicotyledonous plants
,
2010
.
[4]
Kenji Omasa,et al.
Image Instrumentation Methods of Plant Analysis
,
1990
.
[5]
P. A. Moghaddam,et al.
Estimation of single leaf chlorophyll content in sugar beet using machine vision
,
2011,
Turkish Journal of Agriculture and Forestry.