Deep Learning-Based Snake Species Identification for Enhanced Snakebite Management

被引:0
|
作者
Iguernane, Mohamed [1 ]
Ouzziki, Mourad [2 ]
Es-Saady, Youssef [2 ,3 ]
El Hajji, Mohamed [3 ,4 ]
Lansari, Aziza [5 ]
Bouazza, Abdellah [5 ]
机构
[1] Ibnou Zohr Univ, Polydisciplinary Fac Taroudant, ISIMA Lab, Taroudant 83000, Morocco
[2] Ibnou Zohr Univ, Polydisciplinary Fac Taroudant, Taroudant 83000, Morocco
[3] Ibnou Zohr Univ, IRF SIC Lab, Agadir 80000, Morocco
[4] Reg Ctr Educ & Training Profess Souss Massa, Agadir 80000, Morocco
[5] Ibnou Zohr Univ, Polydisciplinary Fac Taroudant, 2GBEI Lab, Taroudant 83000, Morocco
关键词
snake species identification; artificial intelligence (AI); deep learning; snakebite management; Moroccan snakes; healthcare technology; transfer learning; fine-tuning; MOROCCO;
D O I
10.3390/ai6020021
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Accuratesnake species identification is essential for effective snakebite management, particularly in regions like Morocco, where approximately 400 snakebite incidents are reported annually, with a case fatality rate of 7.2%. Identifying venomous snakes promptly can significantly improve treatment outcomes by enabling the timely administration of specific antivenoms. However, the absence of comprehensive databases and rapid identification tools for Moroccan snake species poses challenges to effective clinical responses. This study presents a deep learning-based approach for the automated identification of Moroccan snake species. Several architectures, including VGG-19, VGG-16, and EfficientNet B0, were evaluated for their classification performance. EfficientNet B0 emerged as the most effective model, achieving an accuracy of 92.23% and an F1-score of 93.67%. After training on the SnakeCLEF 2021 dataset and fine-tuning with a specialized local dataset, the model attained a validation accuracy of 94% and an F1-score of 95.86%. To ensure practical applicability, the final model was deployed on a web platform, enabling the rapid and accurate identification of snake species via image uploads. This platform serves as a valuable tool for healthcare professionals and the general public, facilitating improved clinical response and educational awareness. This study highlights the potential of AI-driven solutions to address challenges in snakebite identification and management, offering a scalable approach for regions with limited resources and high snakebite prevalence.
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页数:16
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