Machine learning for acoustic mosquito detection

<p>Mosquitoes are responsible for over one billion cases of disease and over one million deaths each year. The data produced during mosquito surveillance are needed to identify emerging insecticide resistance, facilitate effective and evidence-led insecticide intervention programmes as well as...

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Bibliographic Details
Main Author: Kiskin, I
Other Authors: Roberts, S
Format: Thesis
Language:English
Published: 2020
Subjects:
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author Kiskin, I
author2 Roberts, S
author_facet Roberts, S
Kiskin, I
author_sort Kiskin, I
collection OXFORD
description <p>Mosquitoes are responsible for over one billion cases of disease and over one million deaths each year. The data produced during mosquito surveillance are needed to identify emerging insecticide resistance, facilitate effective and evidence-led insecticide intervention programmes as well as model current and future vector-borne disease transmission. Traditional mosquito survey methods are time-consuming, expensive, and spatially limited. Consequently, many mosquito distribution models that map the range of these insects rely on small quantities of poorly spatially distributed occurrence data. There is therefore an urgent need to develop new mosquito survey methods that can provide real-time species-specific occurrence and abundant data without human risk. Here we consider an acoustic detection paradigm, in which the distinctive buzz of mosquito flight is used as a characteristic signature for detection and subsequent species identification. We show it is possible to achieve high classification accuracy even in data-scarce scenarios, using a combination of deep learning and wavelet encoding. Additionally, we develop and deploy a smartphone app that allows mosquito detection at scale and can discriminate between species with high accuracy. We garner low-resolution labelling for parts of our data via crowdsourcing, supplementing the high-resolution labels obtained from experts and publicly release a baseline model and dataset.</p> <p>The technical materials that underpin this thesis detail development of machine learning approaches for detecting and identifying events in data, with the primary focus of finding mosquito flight tones in acoustic time series. Solutions specific to such audio detection are developed, tested and applied to field-gathered data. Although the research is specific to one focal application domain, the approaches developed are generic and were motivated by canonical problems of low signal-to-noise ratio, sparse data, multiple resolution labelling, class imbalance, and decision bias. They thus apply to a far wider set of detection problems, in audio time series and beyond. </p>
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spelling oxford-uuid:c361ced5-a048-4eda-8af0-f9dde837e72c2022-03-27T06:16:09ZMachine learning for acoustic mosquito detectionThesishttp://purl.org/coar/resource_type/c_db06uuid:c361ced5-a048-4eda-8af0-f9dde837e72cAcoustic modelsDeep learningEngineeringMachine learningEnglishHyrax Deposit2020Kiskin, IRoberts, S<p>Mosquitoes are responsible for over one billion cases of disease and over one million deaths each year. The data produced during mosquito surveillance are needed to identify emerging insecticide resistance, facilitate effective and evidence-led insecticide intervention programmes as well as model current and future vector-borne disease transmission. Traditional mosquito survey methods are time-consuming, expensive, and spatially limited. Consequently, many mosquito distribution models that map the range of these insects rely on small quantities of poorly spatially distributed occurrence data. There is therefore an urgent need to develop new mosquito survey methods that can provide real-time species-specific occurrence and abundant data without human risk. Here we consider an acoustic detection paradigm, in which the distinctive buzz of mosquito flight is used as a characteristic signature for detection and subsequent species identification. We show it is possible to achieve high classification accuracy even in data-scarce scenarios, using a combination of deep learning and wavelet encoding. Additionally, we develop and deploy a smartphone app that allows mosquito detection at scale and can discriminate between species with high accuracy. We garner low-resolution labelling for parts of our data via crowdsourcing, supplementing the high-resolution labels obtained from experts and publicly release a baseline model and dataset.</p> <p>The technical materials that underpin this thesis detail development of machine learning approaches for detecting and identifying events in data, with the primary focus of finding mosquito flight tones in acoustic time series. Solutions specific to such audio detection are developed, tested and applied to field-gathered data. Although the research is specific to one focal application domain, the approaches developed are generic and were motivated by canonical problems of low signal-to-noise ratio, sparse data, multiple resolution labelling, class imbalance, and decision bias. They thus apply to a far wider set of detection problems, in audio time series and beyond. </p>
spellingShingle Acoustic models
Deep learning
Engineering
Machine learning
Kiskin, I
Machine learning for acoustic mosquito detection
title Machine learning for acoustic mosquito detection
title_full Machine learning for acoustic mosquito detection
title_fullStr Machine learning for acoustic mosquito detection
title_full_unstemmed Machine learning for acoustic mosquito detection
title_short Machine learning for acoustic mosquito detection
title_sort machine learning for acoustic mosquito detection
topic Acoustic models
Deep learning
Engineering
Machine learning
work_keys_str_mv AT kiskini machinelearningforacousticmosquitodetection