Detecting motorcycle helmet use with deep learning

dc.contributor.authorSiebert, Felix Wilhelm
dc.contributor.authorLin, Hanhe
dc.date.accessioned2020-01-03T12:45:49Z
dc.date.available2020-01-03T12:45:49Z
dc.date.issued2020-01eng
dc.description.abstractThe continuous motorization of traffic has led to a sustained increase in the global number of road related fatalities and injuries. To counter this, governments are focusing on enforcing safe and law-abiding behavior in traffic. However, especially in developing countries where the motorcycle is the main form of transportation, there is a lack of comprehensive data on the safety-critical behavioral metric of motorcycle helmet use. This lack of data prohibits targeted enforcement and education campaigns which are crucial for injury prevention. Hence, we have developed an algorithm for the automated registration of motorcycle helmet usage from video data, using a deep learning approach. Based on 91,000 annotated frames of video data, collected at multiple observation sites in 7 cities across the country of Myanmar, we trained our algorithm to detect active motorcycles, the number and position of riders on the motorcycle, as well as their helmet use. An analysis of the algorithm's accuracy on an annotated test data set, and a comparison to available human-registered helmet use data reveals a high accuracy of our approach. Our algorithm registers motorcycle helmet use rates with an accuracy of −4.4% and +2.1% in comparison to a human observer, with minimal training for individual observation sites. Without observation site specific training, the accuracy of helmet use detection decreases slightly, depending on a number of factors. Our approach can be implemented in existing roadside traffic surveillance infrastructure and can facilitate targeted data-driven injury prevention campaigns with real-time speed. Implications of the proposed method, as well as measures that can further improve detection accuracy are discussed.eng
dc.description.versionpublishedeng
dc.identifier.arxiv1910.13232eng
dc.identifier.doi10.1016/j.aap.2019.105319eng
dc.identifier.pmid31706186eng
dc.identifier.urihttps://kops.uni-konstanz.de/handle/123456789/48138
dc.language.isoengeng
dc.subjectDeep learning, Helmet use detection, Motorcycle, Road safety, Injury preventioneng
dc.subject.ddc004eng
dc.titleDetecting motorcycle helmet use with deep learningeng
dc.typeJOURNAL_ARTICLEeng
dspace.entity.typePublication
kops.citation.bibtex
@article{Siebert2020-01Detec-48138,
  year={2020},
  doi={10.1016/j.aap.2019.105319},
  title={Detecting motorcycle helmet use with deep learning},
  volume={134},
  issn={0001-4575},
  journal={Accident Analysis & Prevention},
  author={Siebert, Felix Wilhelm and Lin, Hanhe},
  note={Article Number: 105319}
}
kops.citation.iso690SIEBERT, Felix Wilhelm, Hanhe LIN, 2020. Detecting motorcycle helmet use with deep learning. In: Accident Analysis & Prevention. Elsevier. 2020, 134, 105319. ISSN 0001-4575. eISSN 1879-2057. Available under: doi: 10.1016/j.aap.2019.105319deu
kops.citation.iso690SIEBERT, Felix Wilhelm, Hanhe LIN, 2020. Detecting motorcycle helmet use with deep learning. In: Accident Analysis & Prevention. Elsevier. 2020, 134, 105319. ISSN 0001-4575. eISSN 1879-2057. Available under: doi: 10.1016/j.aap.2019.105319eng
kops.citation.rdf
<rdf:RDF
    xmlns:dcterms="http://purl.org/dc/terms/"
    xmlns:dc="http://purl.org/dc/elements/1.1/"
    xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#"
    xmlns:bibo="http://purl.org/ontology/bibo/"
    xmlns:dspace="http://digital-repositories.org/ontologies/dspace/0.1.0#"
    xmlns:foaf="http://xmlns.com/foaf/0.1/"
    xmlns:void="http://rdfs.org/ns/void#"
    xmlns:xsd="http://www.w3.org/2001/XMLSchema#" > 
  <rdf:Description rdf:about="https://kops.uni-konstanz.de/server/rdf/resource/123456789/48138">
    <dspace:isPartOfCollection rdf:resource="https://kops.uni-konstanz.de/server/rdf/resource/123456789/36"/>
    <foaf:homepage rdf:resource="http://localhost:8080/"/>
    <dcterms:isPartOf rdf:resource="https://kops.uni-konstanz.de/server/rdf/resource/123456789/36"/>
    <dcterms:issued>2020-01</dcterms:issued>
    <dc:contributor>Lin, Hanhe</dc:contributor>
    <dcterms:abstract xml:lang="eng">The continuous motorization of traffic has led to a sustained increase in the global number of road related fatalities and injuries. To counter this, governments are focusing on enforcing safe and law-abiding behavior in traffic. However, especially in developing countries where the motorcycle is the main form of transportation, there is a lack of comprehensive data on the safety-critical behavioral metric of motorcycle helmet use. This lack of data prohibits targeted enforcement and education campaigns which are crucial for injury prevention. Hence, we have developed an algorithm for the automated registration of motorcycle helmet usage from video data, using a deep learning approach. Based on 91,000 annotated frames of video data, collected at multiple observation sites in 7 cities across the country of Myanmar, we trained our algorithm to detect active motorcycles, the number and position of riders on the motorcycle, as well as their helmet use. An analysis of the algorithm's accuracy on an annotated test data set, and a comparison to available human-registered helmet use data reveals a high accuracy of our approach. Our algorithm registers motorcycle helmet use rates with an accuracy of −4.4% and +2.1% in comparison to a human observer, with minimal training for individual observation sites. Without observation site specific training, the accuracy of helmet use detection decreases slightly, depending on a number of factors. Our approach can be implemented in existing roadside traffic surveillance infrastructure and can facilitate targeted data-driven injury prevention campaigns with real-time speed. Implications of the proposed method, as well as measures that can further improve detection accuracy are discussed.</dcterms:abstract>
    <dc:language>eng</dc:language>
    <dcterms:title>Detecting motorcycle helmet use with deep learning</dcterms:title>
    <dc:contributor>Siebert, Felix Wilhelm</dc:contributor>
    <dcterms:available rdf:datatype="http://www.w3.org/2001/XMLSchema#dateTime">2020-01-03T12:45:49Z</dcterms:available>
    <void:sparqlEndpoint rdf:resource="http://localhost/fuseki/dspace/sparql"/>
    <bibo:uri rdf:resource="https://kops.uni-konstanz.de/handle/123456789/48138"/>
    <dc:date rdf:datatype="http://www.w3.org/2001/XMLSchema#dateTime">2020-01-03T12:45:49Z</dc:date>
    <dc:creator>Siebert, Felix Wilhelm</dc:creator>
    <dc:creator>Lin, Hanhe</dc:creator>
  </rdf:Description>
</rdf:RDF>
kops.flag.isPeerReviewedtrueeng
kops.flag.knbibliographytrue
kops.sourcefieldAccident Analysis & Prevention. Elsevier. 2020, <b>134</b>, 105319. ISSN 0001-4575. eISSN 1879-2057. Available under: doi: 10.1016/j.aap.2019.105319deu
kops.sourcefield.plainAccident Analysis & Prevention. Elsevier. 2020, 134, 105319. ISSN 0001-4575. eISSN 1879-2057. Available under: doi: 10.1016/j.aap.2019.105319deu
kops.sourcefield.plainAccident Analysis & Prevention. Elsevier. 2020, 134, 105319. ISSN 0001-4575. eISSN 1879-2057. Available under: doi: 10.1016/j.aap.2019.105319eng
relation.isAuthorOfPublication72057485-5f84-41aa-b6cb-8d616362e6a8
relation.isAuthorOfPublication.latestForDiscovery72057485-5f84-41aa-b6cb-8d616362e6a8
source.bibliographicInfo.articleNumber105319eng
source.bibliographicInfo.volume134eng
source.identifier.eissn1879-2057eng
source.identifier.issn0001-4575eng
source.periodicalTitleAccident Analysis & Preventioneng
source.publisherElsevier

Dateien