dc.contributor.author | Sabzi, Sajad | |
dc.contributor.author | Pourdarbani, Razieh | |
dc.contributor.author | Rohban, Mohammad Hossein | |
dc.contributor.author | Fuentes_Penna, Alejandro | |
dc.contributor.author | Hernández-Hernández, José Luis | |
dc.contributor.author | Hernández Hernández, Mario | |
dc.creator | Sabzi, Sajad;#0000-0003-2439-5329 | |
dc.creator | Pourdarbani, Razieh;#0000-0003-0766-8305 | |
dc.creator | Rohban, Mohammad Hossein;#0000-0001-6589-850X | |
dc.creator | Fuentes_Penna, Alejandro;#0000-0002-4303-3852 | |
dc.creator | Hernández-Hernández, José Luis;#0000-0003-0231-2019 | |
dc.creator | Hernández Hernández, Mario;#0000-0001-8330-4779 | |
dc.date.accessioned | 2023-03-23T16:46:03Z | |
dc.date.available | 2023-03-23T16:46:03Z | |
dc.date.issued | 2021-04 | |
dc.identifier.issn | https://doi.org/10.3390/ plants10050898 | |
dc.identifier.uri | http://ri.uagro.mx/handle/uagro/3527 | |
dc.description.abstract | Improper usage of nitrogen in cucumber cultivation causes nitrate accumulation in the fruit and results in food poisoning in humans; therefore, mandatory evaluation of food products becomes inevitable. Hyperspectral imaging has a very good ability to evaluate the quality of fruits and vegetables in a non-destructive manner. The goal of the present paper was to identify excess nitrogen in cucumber plants. To obtain a reliable result, the majority voting method was used, which takes into account the unanimity of five classifiers, namely, the hybrid artificial neural network¿imperialism competitive algorithm (ANN-ICA), the hybrid artificial neural network¿harmonic search (ANN-HS) algorithm, linear discrimination analysis (LDA), the radial basis function network (RBF), and the Knearest- neighborhood (KNN). The wavelengths of 723, 781, and 901 nm were determined as optimal wavelengths using the hybrid artificial neural network¿biogeography-based optimization (ANNBBO) algorithm, and the performance of classifiers was investigated using the optimal spectrum. The results of a t-test showed that there was no significant difference in the precision of the algorithm when using the optimal wavelengths and wavelengths of the whole range. The correct classification rate of the classifiers ANN-ICA, ANN-HS, LDA, RBF, and KNN were 96.14%, 96.11%, 95.73%, 64.03%, and 95.24%, respectively. The correct classification rate of majority voting (MV) was 95.55% for test data in 200 iterations, which indicates the system was successful in distinguishing nitrogen-rich leaves from leaves with a standard content of nitrogen. | |
dc.format | pdf | |
dc.language.iso | eng | |
dc.publisher | Plants | |
dc.rights.uri | http://creativecommons.org/licenses/by-nc-nd/4.0 | |
dc.subject | artificial neural network | |
dc.subject | cucumber | |
dc.subject | hyperspectral imaging | |
dc.subject | majority voting | |
dc.subject | nitrogen | |
dc.subject.classification | INGENIERÍA Y TECNOLOGÍA::CIENCIAS TECNOLÓGICAS::TECNOLOGÍA DE LOS ALIMENTOS | |
dc.title | Classification of Cucumber Leaves Based on Nitrogen Content Using the Hyperspectral Imaging Technique and Majority Voting. | |
dc.type | Artículo | |
dc.type.conacyt | article | |
dc.rights.acces | openAccess | |
dc.audience | generalPublic | |
dc.identificator | 7||33||3309 | |
dc.format.digitalOrigin | Born digital | |
dc.thesis.degreelevel | Doctorado | |
dc.thesis.degreename | Doctorado en Innovación y Cultura Digital | |
dc.thesis.degreegrantor | Universidad Autónoma de Guerrero | |
dc.thesis.degreedepartment | Facultad de Ingeniería | |
dc.thesis.degreediscipline | Ingeniería y Tecnología | |
dc.identifier.cvuagro | 11228 | |