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Hybrid Machine Learning Approach for Mosquito Species Classification using Wingbeat Analysis

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Hybrid Machine Learning Approach for Mosquito Species Classification using Wingbeat Analysis


Mir Irtiqa Farooq | Dr. Dheeraj Chhillar | Mudasir Ahmed Muttoo



Mir Irtiqa Farooq | Dr. Dheeraj Chhillar | Mudasir Ahmed Muttoo "Hybrid Machine Learning Approach for Mosquito Species Classification using Wingbeat Analysis" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-9 | Issue-3, June 2025, pp.633-639, URL: https://www.ijtsrd.com/papers/ijtsrd81086.pdf

Global public health continues to face substantial obstacles from mosquito-borne diseases, making precise and effective techniques for mosquito species identification necessary. We present a unique method in this article called "Mosquito Species Classification through Wingbeat Analysis: A Hybrid Machine Learning Approach," which uses wingbeat analysis and deep learning techniques to classify mosquito species. Our approach leverages Convolutional Neural Networks (CNNs) as the core model to provide robust and dependable classification performance. We make use of an extensive dataset that includes wingbeat recordings from many species of mosquitoes and apply comprehensive pre-processing and feature engineering techniques to enhance the model's effectiveness. Specifically, we extract and combine features such as zero crossing rate (ZCR), root mean square energy (RMSE), mel-frequency cepstral coefficients (MFCC), as well as augmented features derived from audio transformations like add noise, shifting, pitching, and stretching. This combination of handcrafted and augmented features helps to enrich the training data and improve the generalizability of the model. After thorough testing and evaluation, we demonstrate that our CNN-based method achieves superior performance in accurately classifying various mosquito species. Our findings underscore the potential of deep learning methods, particularly CNNs, to surpass conventional classification techniques in species identification tasks. Additionally, we highlight the critical role of accurate species classification in vector surveillance and epidemiological research, emphasizing the broader impact of our work on ecological studies and disease control strategies.

Deep learning, CNN, species classification, wingbeat analysis, mosquito-borne diseases, ZCR, RMSE, MFCC, data augmentation


IJTSRD81086
Volume-9 | Issue-3, June 2025
633-639
IJTSRD | www.ijtsrd.com | E-ISSN 2456-6470
Copyright © 2019 by author(s) and International Journal of Trend in Scientific Research and Development Journal. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0) (http://creativecommons.org/licenses/by/4.0)

International Journal of Trend in Scientific Research and Development - IJTSRD having online ISSN 2456-6470. IJTSRD is a leading Open Access, Peer-Reviewed International Journal which provides rapid publication of your research articles and aims to promote the theory and practice along with knowledge sharing between researchers, developers, engineers, students, and practitioners working in and around the world in many areas like Sciences, Technology, Innovation, Engineering, Agriculture, Management and many more and it is recommended by all Universities, review articles and short communications in all subjects. IJTSRD running an International Journal who are proving quality publication of peer reviewed and refereed international journals from diverse fields that emphasizes new research, development and their applications. IJTSRD provides an online access to exchange your research work, technical notes & surveying results among professionals throughout the world in e-journals. IJTSRD is a fastest growing and dynamic professional organization. The aim of this organization is to provide access not only to world class research resources, but through its professionals aim to bring in a significant transformation in the real of open access journals and online publishing.

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