mAedesID: Android Application for Aedes Mosquito Species Identification using Convolutional Neural Network
G. Jeyakodi, Trisha Agarwal, P. Shanthi Bala

TL;DR
This paper introduces mAedesID, an Android app utilizing CNN to identify Aedes mosquito species, aiding community efforts in controlling vector-borne diseases like dengue.
Contribution
The work presents a novel mobile application that leverages deep learning for accurate Aedes mosquito species identification on Android devices.
Findings
Achieves high accuracy in species classification
Facilitates community participation in mosquito control
Provides an accessible tool for vector monitoring
Abstract
Vector-Borne Disease (VBD) is an infectious disease transmitted through the pathogenic female Aedes mosquito to humans and animals. It is important to control dengue disease by reducing the spread of Aedes mosquito vectors. Community awareness plays acrucial role to ensure Aedes control programmes and encourages the communities to involve active participation. Identifying the species of mosquito will help to recognize the mosquito density in the locality and intensifying mosquito control efforts in particular areas. This willhelp in avoiding Aedes breeding sites around residential areas and reduce adult mosquitoes. To serve this purpose, an android application are developed to identify Aedes species that help the community to contribute in mosquito control events. Several Android applications have been developed to identify species like birds, plant species, and Anopheles mosquito…
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Taxonomy
TopicsMosquito-borne diseases and control · Digital Imaging for Blood Diseases · Dengue and Mosquito Control Research
