Scientific Reports (Nov 2024)

Enhancing mosquito classification through self-supervised learning

  • Ratana Charoenpanyakul,
  • Veerayuth Kittichai,
  • Songpol Eiamsamang,
  • Patchara Sriwichai,
  • Natchapon Pinetsuksai,
  • Kaung Myat Naing,
  • Teerawat Tongloy,
  • Siridech Boonsang,
  • Santhad Chuwongin

DOI
https://doi.org/10.1038/s41598-024-78260-2
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 20

Abstract

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Abstract Traditional mosquito identification methods, relied on microscopic observation and morphological characteristics, often require significant expertise and experience, which can limit their effectiveness. This study introduces a self-supervised learning-based image classification model using the Bootstrap Your Own Latent (BYOL) algorithm, designed to enhance mosquito species identification efficiently. The BYOL algorithm offers a key advantage by eliminating the need for labeled data during pretraining, as it autonomously learns important features. During fine-tuning, the model requires only a small fraction of labeled data to achieve accurate results. Our approach demonstrates impressive performance, achieving over 96.77% accuracy in mosquito image analysis, with minimized both false positives and false negatives. Additionally, the model’s overall accuracy, measured by the area under the ROC curve, surpasses 99.55%, highlighting its robustness and reliability. A notable finding is that fine-tuning with just 10% of labeled data produces results comparable to using the full dataset. This is particularly valuable for resource-limited settings with limited access to advanced equipment and expertise. Our model provides a practical solution for mosquito identification, overcoming the challenges of traditional microscopic methods, such as the time-consuming process and reliance on specialized knowledge in healthcare services. Overall, this model supports personnel in resource-constrained environments by facilitating mosquito vector density analysis and paving the way for future mosquito species identification methodologies.

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