Saturday, 22 July 2023

Effective Techniques for the Analysis of Hyperspectral Images to Detect Black Sigatoka Disease Based on Unique Learning Principles | Chapter 3 | Emerging Issues in Agricultural Sciences Vol. 5

 The present study evaluates cutting distributed edge brilliance methods accompanying unique learning hypotheses for hyperspectral imaging-located early detection of the black sigatoka ailment. We go over the knowledge characteristics of the techniques secondhand, which will aid researchers in better understanding the conditions for the essential data and choosing a design that will work for their research needs. With the constant progress of development, artificial intelligence be able good progress in the analysis and recognition of figures, which has further triggered some investigators to explore the region of combining machine learning and deep education with hyperspectral countenances and achieve some progress. The current synthetic methods for controlling plant afflictions have an adverse effect on the surroundings and raise the cost of production. Creating efficient crop care strategies demands accurate and early disease discovery of the disease.  A set of hyperspectral representations of banana leaves inoculated accompanying a conidial suspension of black sigatoka tumor (Pseudocercospora fijiensis) was used to train and validate machine intelligence models. Support vector machine (SVM), multilayer perceptron (MLP), affecting animate nerve organs networks, N-way incomplete least square–discriminant analysis (NPLS-DA), and prejudiced least square–penalized logistic regression (PLS-PLR) were picked due to their extreme predictive power. When the ghostly signatures of the misclassified leaves were distinguished with the average spectra of the athletic and diseased leaves, the correspondences and differences that explained their wrong classification could be noticed. The models were assessed utilizing the metrics of AUC, precision, sympathy, prediction, and F1 score. The exploratory outcomes demonstrate that the PLS-PLR, SVM, and MLP models authorize the successful and well reliable early detection of evil sigatoka disease, positioning ruling class as robust and very reliable HSI classification orders for the early detection of plant ailment and allowing for the evaluation of synthetic and biological control of phytopathogens.

Author(s) Details:

Jorge Ugarte Fajardo,
Maestría en Inteligencia de Negocios, Universidad Tecnológica Ecotec, Guayaquil 092302, Ecuador.

María Maridueña-Zavala,
ESPOL Polytechnic University, Escuela Superior Politécnica del Litoral, ESPOL, Centro de Investigaciones Biotecnológicas del Ecuador (CIBE), Guayaquil 090902, Ecuador.

Juan Cevallos-Cevallos,
ESPOL Polytechnic University, Escuela Superior Politécnica del Litoral, ESPOL, Centro de Investigaciones Biotecnológicas del Ecuador (CIBE), Guayaquil 090902, Ecuador and Facultad de Ciencias de la Vida (FCV), ESPOL Polytechnic University, Escuela Superior Politécnica del Litoral, ESPOL, Guayaquil 090902, Ecuador.

Daniel Ochoa Donoso,
Facultad de Ingeniería Eléctrica y Computación (FIEC), ESPOL Polytechnic University, Escuela Superior Politécnica del Litoral, ESPOL, Guayaquil 0909022, Ecuador.

Please see the link here: https://stm.bookpi.org/EIAS-V5/article/view/11136

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