An efficient densenet-based deep learning model for Big-4 snake species classification.

Journal: Toxicon : official journal of the International Society on Toxinology
PMID:

Abstract

Snakebite poses a significant health threat in numerous tropical and subtropical nations, with around 5.4 million cases reported annually, which results in 1.8-2.7 million instances of envenomation, underscoring its critical impact on public health. The 'BIG FOUR' group comprises the primary committers responsible for most snake bites in India. Effective management of snakebite victims is essential for prognosis, emphasizing the need for preventive measures to limit snakebite-related deaths. The proposed initiative seeks to develop a transfer learning-based image classification algorithm using DenseNet to identify venomous and non-venomous snakes automatically. The study comprehensively evaluates the image classification results, employing accuracy, F1-score, Recall, and Precision metrics. DenseNet emerges as a potent tool for multiclass snake image classification, achieving a notable accuracy rate of 86%. The proposed algorithm intends to be incorporated into an AI-based snake-trapping device with artificial prey made with tungsten wire and vibration motors to mimic heat and vibration signatures, enhancing its appeal to snakes. The proposed algorithm in this research holds promise as a primary tool for preventing snake bites globally, offering a path toward automated snake capture without human intervention. These findings are significant in preventing snake bites and advancing snakebite mitigation strategies.

Authors

  • Huma Naz
    Department of Computer Science, School of Computer Science, University of Petroleum and Energy Studies, Dehradun, 248007, India. huma.naz@ddn.upes.ac.in.
  • Rahul Chamola
    Department of Mechanical Engineering, School of Advanced Engineering, University of Petroleum and Energy Studies, Dehradun, India. Electronic address: rahul.chamola@ddn.upes.ac.in.
  • Jaleh Sarafraz
    UMR7179 CNRS/MNHN, Département Àdaptations du vivant, Museum National d'Histoire Naturelle, Paris, France.
  • Mahdi Razabizadeh
    Department of Biodiversity, Institute of Science and High Technology and Environmental Sciences, Graduate University of Advanced Technology, Kerman, Iran. Electronic address: khosro.rajabizadeh@gmail.com.
  • Siddharth Jain
    Department of Mechanical Engineering, School of Advanced Engineering, University of Petroleum and Energy Studies, Dehradun, India.