eprintid: 9237 rev_number: 8 eprint_status: archive userid: 2 dir: disk0/00/00/92/37 datestamp: 2023-10-17 23:30:23 lastmod: 2023-10-17 23:30:23 status_changed: 2023-10-17 23:30:23 type: article metadata_visibility: show creators_name: Aggarwal, Meenakshi creators_name: Khullar, Vikas creators_name: Goyal, Nitin creators_name: Singh, Aman creators_name: Tolba, Amr creators_name: Bautista Thompson, Ernesto creators_name: Kumar, Sushil creators_id: creators_id: creators_id: creators_id: aman.singh@uneatlantico.es creators_id: creators_id: ernesto.bautista@unini.edu.mx creators_id: title: Pre-Trained Deep Neural Network-Based Features Selection Supported Machine Learning for Rice Leaf Disease Classification ispublished: pub subjects: uneat_eng divisions: uneatlantico_produccion_cientifica divisions: uninipr_produccion_cientifica full_text_status: public keywords: rice leaf disease; machine learning; deep learning; ensemble learning; segmentation; pre-trained models abstract: Rice is a staple food for roughly half of the world’s population. Some farmers prefer rice cultivation to other crops because rice can thrive in a wide range of environments. Several studies have found that about 70% of India’s population relies on agriculture in some way and that agribusiness accounts for about 17% of India’s GDP. In India, rice is one of the most important crops, but it is vulnerable to a number of diseases throughout the growing process. Farmers’ manual identification of these diseases is highly inaccurate due to their lack of medical expertise. Recent advances in deep learning models show that automatic image recognition systems can be extremely useful in such situations. In this paper, we propose a suitable and effective system for predicting diseases in rice leaves using a number of different deep learning techniques. Images of rice leaf diseases were gathered and processed to fulfil the algorithmic requirements. Initially, features were extracted by using 32 pre-trained models, and then we classified the images of rice leaf diseases such as bacterial blight, blast, and brown spot with numerous machine learning and ensemble learning classifiers and compared the results. The proposed procedure works better than other methods that are currently used. It achieves 90–91% identification accuracy and other performance parameters such as precision, Recall Rate, F1-score, Matthews Coefficient, and Kappa Statistics on a normal data set. Even after the segmentation process, the value reaches 93–94% for model EfficientNetV2B3 with ET and HGB classifiers. The proposed model efficiently recognises rice leaf diseases with an accuracy of 94%. The experimental results show that the proposed procedure is valid and effective for identifying rice diseases. date: 2023-04 publication: Agriculture volume: 13 number: 5 pagerange: 936 id_number: doi:10.3390/agriculture13050936 refereed: TRUE issn: 2077-0472 official_url: http://doi.org/10.3390/agriculture13050936 access: close language: en citation: Artículo Materias > Ingeniería Universidad Europea del Atlántico > Investigación > Producción Científica Universidad Internacional Iberoamericana Puerto Rico > Investigación > Producción Científica Cerrado Inglés Rice is a staple food for roughly half of the world’s population. Some farmers prefer rice cultivation to other crops because rice can thrive in a wide range of environments. Several studies have found that about 70% of India’s population relies on agriculture in some way and that agribusiness accounts for about 17% of India’s GDP. In India, rice is one of the most important crops, but it is vulnerable to a number of diseases throughout the growing process. Farmers’ manual identification of these diseases is highly inaccurate due to their lack of medical expertise. Recent advances in deep learning models show that automatic image recognition systems can be extremely useful in such situations. In this paper, we propose a suitable and effective system for predicting diseases in rice leaves using a number of different deep learning techniques. Images of rice leaf diseases were gathered and processed to fulfil the algorithmic requirements. Initially, features were extracted by using 32 pre-trained models, and then we classified the images of rice leaf diseases such as bacterial blight, blast, and brown spot with numerous machine learning and ensemble learning classifiers and compared the results. The proposed procedure works better than other methods that are currently used. It achieves 90–91% identification accuracy and other performance parameters such as precision, Recall Rate, F1-score, Matthews Coefficient, and Kappa Statistics on a normal data set. Even after the segmentation process, the value reaches 93–94% for model EfficientNetV2B3 with ET and HGB classifiers. The proposed model efficiently recognises rice leaf diseases with an accuracy of 94%. The experimental results show that the proposed procedure is valid and effective for identifying rice diseases. metadata Aggarwal, Meenakshi; Khullar, Vikas; Goyal, Nitin; Singh, Aman; Tolba, Amr; Bautista Thompson, Ernesto y Kumar, Sushil mail SIN ESPECIFICAR, SIN ESPECIFICAR, SIN ESPECIFICAR, aman.singh@uneatlantico.es, SIN ESPECIFICAR, ernesto.bautista@unini.edu.mx, SIN ESPECIFICAR (2023) Pre-Trained Deep Neural Network-Based Features Selection Supported Machine Learning for Rice Leaf Disease Classification. Agriculture, 13 (5). p. 936. ISSN 2077-0472 document_url: http://repositorio.unib.org/id/eprint/9237/1/agriculture-13-00936.pdf