Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Applying Spectral Fractal Dimension to Predict the SPAD Value of Rice Leaves Under Disease Stress

View through CrossRef
Abstract BackgroundThe chlorophyll content is a vital indicator for reflecting the photosynthesis ability of plants and it plays a significant role in monitoring the general health of plants. Since the chlorophyll content and the soil-plant analysis development (SPAD) value are positively correlated, it is feasible to estimate the SPAD value by calculating the vegetation indices (VIs) through hyperspectral images, thereby estimating the chlorophyll content. However, current indices simply adopted few wavelengths of the hyperspectral information, which may decrease the estimation accuracy. Besides, few researches explored the applicability of VIs over plant leaves under disease stress.MethodsIn this study, the SPAD value was estimated by calculating the fractal dimension of hyperspectral curves, ranging from 420 to 950 nm. The correlation between the SPAD value and wavelengths under disease stress was analyzed. In addition, a SPAD prediction model was built upon the combination of selected indices and 4 machine learning methods, including decision tree (DT), partial least square regression (PLSR), support vector regression (SVR), and back propagation neural network (BPNN). The performance of these models was compared through the correlation of determination, root mean square error, and relative error.ResultsThe results suggested that the SPAD value of rice leaves under different disease levels were sensitive to different wavelengths, meaning that the fixed wavelength selection in current indices may achieve poor estimation results. Compared with current VIs, a stronger positive correlation was detected between the SPAD value and our proposal, reaching an average correlation coefficient of 0.8263. For the prediction model, the one built with our proposal and SVR achieved the best performance, reaching R2, RMSE, and RE at 0.8752, 3.7715, and 7.8614%, respectively.ConclusionsThis work provides an in-depth insight for accurately and robustly estimating the SPAD value of rice leaves under disease stress, and our proposal is of great significance for monitoring the chlorophyll content in large-scale fields non-destructively.
Title: Applying Spectral Fractal Dimension to Predict the SPAD Value of Rice Leaves Under Disease Stress
Description:
Abstract BackgroundThe chlorophyll content is a vital indicator for reflecting the photosynthesis ability of plants and it plays a significant role in monitoring the general health of plants.
Since the chlorophyll content and the soil-plant analysis development (SPAD) value are positively correlated, it is feasible to estimate the SPAD value by calculating the vegetation indices (VIs) through hyperspectral images, thereby estimating the chlorophyll content.
However, current indices simply adopted few wavelengths of the hyperspectral information, which may decrease the estimation accuracy.
Besides, few researches explored the applicability of VIs over plant leaves under disease stress.
MethodsIn this study, the SPAD value was estimated by calculating the fractal dimension of hyperspectral curves, ranging from 420 to 950 nm.
The correlation between the SPAD value and wavelengths under disease stress was analyzed.
In addition, a SPAD prediction model was built upon the combination of selected indices and 4 machine learning methods, including decision tree (DT), partial least square regression (PLSR), support vector regression (SVR), and back propagation neural network (BPNN).
The performance of these models was compared through the correlation of determination, root mean square error, and relative error.
ResultsThe results suggested that the SPAD value of rice leaves under different disease levels were sensitive to different wavelengths, meaning that the fixed wavelength selection in current indices may achieve poor estimation results.
Compared with current VIs, a stronger positive correlation was detected between the SPAD value and our proposal, reaching an average correlation coefficient of 0.
8263.
For the prediction model, the one built with our proposal and SVR achieved the best performance, reaching R2, RMSE, and RE at 0.
8752, 3.
7715, and 7.
8614%, respectively.
ConclusionsThis work provides an in-depth insight for accurately and robustly estimating the SPAD value of rice leaves under disease stress, and our proposal is of great significance for monitoring the chlorophyll content in large-scale fields non-destructively.

Related Results

Applying spectral fractal dimension index to predict the SPAD value of rice leaves under bacterial blight disease stress
Applying spectral fractal dimension index to predict the SPAD value of rice leaves under bacterial blight disease stress
AbstractBackgroundThe chlorophyll content is a vital indicator for reflecting the photosynthesis ability of plants and it plays a significant role in monitoring the general health ...
Rapid and Nondestructive Evaluation of Rice SPAD Value under Disease Stress Using Hyperspectral Imaging Sensors
Rapid and Nondestructive Evaluation of Rice SPAD Value under Disease Stress Using Hyperspectral Imaging Sensors
Leaf chlorophyll content is an important indicator of photosynthetic capacity and health status and plays a key role in monitoring plant growth. At present, research on chlorophyll...
Dynamic Rigid Fractal Spacetime Manifold Theory
Dynamic Rigid Fractal Spacetime Manifold Theory
This paper proposes an innovative framework, the Dynamic Rigid Fractal Spacetime Manifold Theory (DRFSMT), which integrates fractal and noncommutative algebra to provide a unified ...
Winter Wheat SPAD Value Inversion Based on Multiple Pretreatment Methods
Winter Wheat SPAD Value Inversion Based on Multiple Pretreatment Methods
SPAD value was measured by a portable chlorophyll instrument, which can reflect the relative chlorophyll content of vegetation well. Chlorophyll is an important organic chemical su...
Extraction of Rice Bran Oil from Rice Bran by Supercritical Carbon Dioxide
Extraction of Rice Bran Oil from Rice Bran by Supercritical Carbon Dioxide
  Rice bran is an important source of nutrients that have many good bioactive compounds. This study examined the extraction of bran rice oil using supercritical carbon dioxide. Fr...
Acoustics of Fractal Porous Material and Fractional Calculus
Acoustics of Fractal Porous Material and Fractional Calculus
In this paper, we present a fractal (self-similar) model of acoustic propagation in a porous material with a rigid structure. The fractal medium is modeled as a continuous medium o...

Back to Top