Automating the Surveillance of Mosquito Vectors from Trapped Specimens Using Computer Vision Techniques
Mona Minakshi, Pratool Bharti, Willie B. McClinton III, Jamshidbek, Mirzakhalov, Ryan M. Carney, Sriram Chellappan

TL;DR
This paper introduces an automated computer vision system using CNNs to classify mosquito species from images, significantly aiding vector surveillance and disease control efforts.
Contribution
It presents a novel CNN-based approach with transfer learning for mosquito classification, achieving high accuracy on a large dataset of trapped specimens.
Findings
Achieved 80% overall accuracy in mosquito classification.
High accuracy in identifying key disease vectors like Aedes aegypti.
Demonstrated practical use of smartphone cameras for field surveillance.
Abstract
Among all animals, mosquitoes are responsible for the most deaths worldwide. Interestingly, not all types of mosquitoes spread diseases, but rather, a select few alone are competent enough to do so. In the case of any disease outbreak, an important first step is surveillance of vectors (i.e., those mosquitoes capable of spreading diseases). To do this today, public health workers lay several mosquito traps in the area of interest. Hundreds of mosquitoes will get trapped. Naturally, among these hundreds, taxonomists have to identify only the vectors to gauge their density. This process today is manual, requires complex expertise/ training, and is based on visual inspection of each trapped specimen under a microscope. It is long, stressful and self-limiting. This paper presents an innovative solution to this problem. Our technique assumes the presence of an embedded camera (similar to…
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