Cargando…

An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance

An essential aspect of controlling and preventing mosquito-borne diseases is to reduce mosquitoes that carry viruses. We designed a smart mosquito trap system to reduce the density of mosquito vectors and the spread of mosquito-borne diseases. This smart trap uses computer vision technology and deep...

Descripción completa

Detalles Bibliográficos
Autores principales: Liu, Wei-Liang, Wang, Yuhling, Chen, Yu-Xuan, Chen, Bo-Yu, Lin, Arvin Yi-Chu, Dai, Sheng-Tong, Chen, Chun-Hong, Liao, Lun-De
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9895108/
https://www.ncbi.nlm.nih.gov/pubmed/36741759
http://dx.doi.org/10.3389/fbioe.2023.1100968
_version_ 1784881880085037056
author Liu, Wei-Liang
Wang, Yuhling
Chen, Yu-Xuan
Chen, Bo-Yu
Lin, Arvin Yi-Chu
Dai, Sheng-Tong
Chen, Chun-Hong
Liao, Lun-De
author_facet Liu, Wei-Liang
Wang, Yuhling
Chen, Yu-Xuan
Chen, Bo-Yu
Lin, Arvin Yi-Chu
Dai, Sheng-Tong
Chen, Chun-Hong
Liao, Lun-De
author_sort Liu, Wei-Liang
collection PubMed
description An essential aspect of controlling and preventing mosquito-borne diseases is to reduce mosquitoes that carry viruses. We designed a smart mosquito trap system to reduce the density of mosquito vectors and the spread of mosquito-borne diseases. This smart trap uses computer vision technology and deep learning networks to identify features of live Aedes aegypti and Culex quinquefasciatus in real-time. A unique mechanical design based on the rotation concept is also proposed and implemented to capture specific living mosquitoes into the corresponding chambers successfully. Moreover, this system is equipped with sensors to detect environmental data, such as CO(2) concentration, temperature, and humidity. We successfully demonstrated the implementation of such a tool and paired it with a reliable capture mechanism for live mosquitos without destroying important morphological features. The neural network achieved 91.57% accuracy with test set images. When the trap prototype was applied in a tent, the accuracy rate in distinguishing live Ae. aegypti was 92%, with a capture rate reaching 44%. When the prototype was placed into a BG trap to produce a smart mosquito trap, it achieved a 97% recognition rate and a 67% catch rate when placed in the tent. In a simulated living room, the recognition and capture rates were 90% and 49%, respectively. This smart trap correctly differentiated between Cx. quinquefasciatus and Ae. aegypti mosquitoes, and may also help control mosquito-borne diseases and predict their possible outbreak.
format Online
Article
Text
id pubmed-9895108
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-98951082023-02-04 An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance Liu, Wei-Liang Wang, Yuhling Chen, Yu-Xuan Chen, Bo-Yu Lin, Arvin Yi-Chu Dai, Sheng-Tong Chen, Chun-Hong Liao, Lun-De Front Bioeng Biotechnol Bioengineering and Biotechnology An essential aspect of controlling and preventing mosquito-borne diseases is to reduce mosquitoes that carry viruses. We designed a smart mosquito trap system to reduce the density of mosquito vectors and the spread of mosquito-borne diseases. This smart trap uses computer vision technology and deep learning networks to identify features of live Aedes aegypti and Culex quinquefasciatus in real-time. A unique mechanical design based on the rotation concept is also proposed and implemented to capture specific living mosquitoes into the corresponding chambers successfully. Moreover, this system is equipped with sensors to detect environmental data, such as CO(2) concentration, temperature, and humidity. We successfully demonstrated the implementation of such a tool and paired it with a reliable capture mechanism for live mosquitos without destroying important morphological features. The neural network achieved 91.57% accuracy with test set images. When the trap prototype was applied in a tent, the accuracy rate in distinguishing live Ae. aegypti was 92%, with a capture rate reaching 44%. When the prototype was placed into a BG trap to produce a smart mosquito trap, it achieved a 97% recognition rate and a 67% catch rate when placed in the tent. In a simulated living room, the recognition and capture rates were 90% and 49%, respectively. This smart trap correctly differentiated between Cx. quinquefasciatus and Ae. aegypti mosquitoes, and may also help control mosquito-borne diseases and predict their possible outbreak. Frontiers Media S.A. 2023-01-20 /pmc/articles/PMC9895108/ /pubmed/36741759 http://dx.doi.org/10.3389/fbioe.2023.1100968 Text en Copyright © 2023 Liu, Wang, Chen, Chen, Lin, Dai, Chen and Liao. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Bioengineering and Biotechnology
Liu, Wei-Liang
Wang, Yuhling
Chen, Yu-Xuan
Chen, Bo-Yu
Lin, Arvin Yi-Chu
Dai, Sheng-Tong
Chen, Chun-Hong
Liao, Lun-De
An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
title An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
title_full An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
title_fullStr An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
title_full_unstemmed An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
title_short An IoT-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
title_sort iot-based smart mosquito trap system embedded with real-time mosquito image processing by neural networks for mosquito surveillance
topic Bioengineering and Biotechnology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9895108/
https://www.ncbi.nlm.nih.gov/pubmed/36741759
http://dx.doi.org/10.3389/fbioe.2023.1100968
work_keys_str_mv AT liuweiliang aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT wangyuhling aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT chenyuxuan aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT chenboyu aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT linarvinyichu aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT daishengtong aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT chenchunhong aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT liaolunde aniotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT liuweiliang iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT wangyuhling iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT chenyuxuan iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT chenboyu iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT linarvinyichu iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT daishengtong iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT chenchunhong iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance
AT liaolunde iotbasedsmartmosquitotrapsystemembeddedwithrealtimemosquitoimageprocessingbyneuralnetworksformosquitosurveillance