A hybrid human machine system for the detection and management of potholes on asphalt road surfaces

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dc.contributor.author Naidoo, T. en
dc.contributor.author Chiwewe, Tapiwa Moses en
dc.contributor.author Luvhengo, T. en
dc.contributor.author Motloutsi, T. en
dc.contributor.author Tyatyantsi, A. en
dc.date.accessioned 2016-11-08T12:11:15Z
dc.date.available 2016-11-08T12:11:15Z
dc.date.issued 2015 en
dc.description Paper presented at the 34th Annual Southern African Transport Conference 6-9 July 2015 "Working Together to Deliver - Sakha Sonke", CSIR International Convention Centre, Pretoria, South Africa. en
dc.description.abstract Road distresses such as potholes can have a negative economic and social impact. The timeous detection and identification of potholes could expedite the maintenance and repair of potholes. The research team previously investigated and reported on the Visual Surveying Platform, which is a system that automatically detects and geo-tags potholes, with a detection accuracy of approximately 82%. At this level of accuracy, errors consisting largely of false positives could result in repair teams responding to non-existent potholes. In order to incorporate the detection system into the existing workflow of one of the municipalities in the Gauteng area, the detection accuracy needed to be improved. The research team modified the system to include a ?human-in-the-loop? mode of operation, where the detection system performs a more suggestive function. The mobile detection system automatically detects potholes in real-time and presents the detections to an operator for validation. The validated detections are then introduced into the operational workflow of the maintenance and repair teams. The ?human-in-the-loop? system and the operational workflow are described in detail in this paper. en
dc.description.sponsorship The Minister of Transport, South Africa en
dc.description.sponsorship Transportation Research Board of the USA en
dc.format.extent 8 Pages en
dc.format.medium PDF en
dc.identifier.citation Naidoo, T, Chiwewe, TM, Luvhengo, T, Motloutsi, T & Tyatyantsi, A 2015, "A hybrid human machine system for the detection and management of potholes on asphalt road surfaces", Paper presented at the 34th Annual Southern African Transport Conference 6-9 July 2015 "Working Together to Deliver - Sakha Sonke", CSIR International Convention Centre, Pretoria, South Africa. en
dc.identifier.isbn 978-1-920017-63-7 en
dc.identifier.uri http://hdl.handle.net/2263/57732
dc.language.iso en en
dc.publisher Southern African Transport Conference en
dc.rights Southern African Transport Conference en
dc.subject Interactive machine learning en
dc.subject Computer vision en
dc.subject Image processing en
dc.subject Geospatial Information System en
dc.subject.lcsh Transportation en
dc.subject.lcsh Transportation -- Africa en
dc.subject.lcsh Transportation -- Southern Africa en
dc.title A hybrid human machine system for the detection and management of potholes on asphalt road surfaces en
dc.type Presentation en


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