4.7 Article

Spectral characterization and severity assessment of rice blast disease using univariate and multivariate models

Journal

FRONTIERS IN PLANT SCIENCE
Volume 14, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fpls.2023.1067189

Keywords

rice blast; hyperspectral remote sensing; JM distance; vegetation indices; ratio blast index; normalized difference blast index; machine learning techniques; support vector machine regression (SVM)

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Rice is a staple food for many people and is often affected by pests and diseases, such as rice blast, which can cause significant yield loss. Traditional methods for disease assessment are time-consuming and expensive. This study explored the use of hyperspectral remote sensing to quickly and accurately assess the severity of rice blast disease. Field experiments were conducted with different rice genotypes, and spectral observations were taken using a portable spectroradiometer. Different spectral indices and multivariate models were tested to predict blast severity. The results showed that the proposed indices and support vector machine regression model were effective in estimating blast severity. This methodology can help in early detection and large-scale monitoring of diseases, providing better disease management options.
Rice is the staple food of more than half of the population of the world and India as well. One of the major constraints in rice production is frequent occurrence of pests and diseases and one of them is rice blast which often causes yield loss varying from 10 to 30%. Conventional approaches for disease assessment are time-consuming, expensive, and not real-time; alternately, sensor-based approach is rapid, non-invasive and can be scaled up in large areas with minimum time and effort. In the present study, hyperspectral remote sensing for the characterization and severity assessment of rice blast disease was exploited. Field experiments were conducted with 20 genotypes of rice having sensitive and resistant cultivars grown under upland and lowland conditions at Almora, Uttarakhand, India. The severity of the rice blast was graded from 0 to 9 in accordance to International Rice Research Institute (IRRI). Spectral observations in field were taken using a hand-held portable spectroradiometer in range of 350-2500 nm followed by spectral discrimination of different disease severity levels using Jeffires-Matusita (J-M) distance. Then, evaluation of 26 existing spectral indices (r >= 0.8) was done corresponding to blast severity levels and linear regression prediction models were also developed. Further, the proposed ratio blast index (RBI) and normalized difference blast index (NDBI) were developed using all possible combinations of their correlations with severity level followed by their quantification to identify the best indices. Thereafter, multivariate models like support vector machine regression (SVM), partial least squares (PLS), random forest (RF), and multivariate adaptive regression spline (MARS) were also used to estimate blast severity. Jeffires-Matusita distance was separating almost all severity levels having values >1.92 except levels 4 and 5. The 26 prediction models were effective at predicting blast severity with R-2 values from 0.48 to 0.85. The best developed spectral indices for rice blast were RBI (R1148, R1301) and NDBI (R1148, R1301) with R-2 of 0.85 and 0.86, respectively. Among multivariate models, SVM was the best model with calibration R-2=0.99; validation R-2=0.94, RMSE=0.7, and RPD=4.10. The methodology developed paves way for early detection and large-scale monitoring and mapping using satellite remote sensors at farmers' fields for developing better disease management options.

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