Automatic Counting and Classification of Mosquito Eggs in Field Traps
Javier Naranjo-Alcazar, Jordi Grau-Haro, Pedro Zuccarello, David, Almenar, Jesus Lopez-Ballester

TL;DR
This paper presents an automated system for counting and classifying mosquito eggs in field traps, improving accuracy and efficiency for mosquito control programs using Industry 4.0 techniques.
Contribution
It introduces novel methods for classifying eggs as hatched or unhatched and reconstructing ovitraps from partial images, enhancing analysis capacity over previous deep learning approaches.
Findings
Improved egg counting accuracy
Ability to classify egg hatch status
Simultaneous analysis of multiple ovitraps
Abstract
Insect pest control poses a global challenge, affecting public health, food safety, and the environment. Diseases transmitted by mosquitoes are expanding beyond tropical regions due to climate change. Agricultural pests further exacerbate economic losses by damaging crops. The Sterile Insect Technique (SIT) emerges as an eco-friendly alternative to chemical pesticides, involving the sterilization and release of male insects to curb population growth. This work focuses on the automation of the analysis of field ovitraps used to follow-up a SIT program for the Aedes albopictus mosquito in the Valencian Community, Spain, funded by the Conselleria de Agricultura, Agua, Ganaderia y Pesca. Previous research has leveraged deep learning algorithms to automate egg counting in ovitraps, yet faced challenges such as manual handling and limited analysis capacity. Innovations in our study include…
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Taxonomy
TopicsSmart Agriculture and AI
