Multiple Object Tracking for Robust Quantitative Analysis of Passenger Motion While Boarding and Alighting a Metropolitan Train

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dc.contributor.author Gómez Meza, José Sebastián
dc.contributor.author Delpiano, José
dc.contributor.author Velastin Carroza, Sergio Alejandro
dc.contributor.author Fernández, Rodrigo
dc.contributor.author Seriani Awad, Sebastián
dc.date.accessioned 2021-06-03T08:37:23Z
dc.date.available 2021-06-03T08:37:23Z
dc.date.issued 2021-03-17
dc.identifier.bibliographicCitation Gómez Meza, J. S., et al. (2021, march). Multiple Object Tracking for Robust Quantitative Analysis of Passenger Motion While Boarding and Alighting a Metropolitan Train. In: 11th International Conference on Pattern Recognition Systems (ICPRS-21), conference paper, 17-19 mar, 2021, Universidad de Talca, Curicó, Chile.
dc.identifier.other http://www.icprs.org/
dc.identifier.uri http://hdl.handle.net/10016/32825
dc.description Procedings in: 11th International Conference on Pattern Recognition Systems (ICPRS-21), conference paper, 17-19 mar, 2021, Universidad de Talca, Curicó, Chile.
dc.description.abstract To achieve significant improvements in public transport it is necessary to develop an autonomous system that locates and counts passengers in real time in scenarios with a high level of occlusion, providing tools to efficiently solve problems such as reduction and stabilization in travel times, greater fluency, better control of fleets and less congestion. A deep learning method based in transfer learning is used to accomplish this: You Only Look Once (YOLO) version 3 and Faster R-CNN Inception version 2 architectures are fine tuned using PAMELA-UANDES dataset, which contains annotated images of the boarding and alighting of passengers on a subway platform from a superior perspective. The locations given by the detector are passed through a multiple object tracking system implemented based on a Markov decision process that associates subjects in consecutive frames and assigns identities considering overlaps between past detections and predicted positions using a Kalman filter.
dc.format.extent 8
dc.language.iso eng
dc.publisher IET Digital Library
dc.rights © Institution of Engineering and Technology, 2021
dc.subject.other Deep learning
dc.subject.other Object detection
dc.subject.other Passenger counting
dc.subject.other YOLO v3
dc.subject.other Faster R-CNN
dc.title Multiple Object Tracking for Robust Quantitative Analysis of Passenger Motion While Boarding and Alighting a Metropolitan Train
dc.type conferenceObject
dc.subject.eciencia Informática
dc.rights.accessRights openAccess
dc.type.version acceptedVersion
dc.relation.eventdate 2021-03-17
dc.relation.eventplace Universidad de Talca, Curicó, Chile (conferencia virtual)
dc.relation.eventtitle 11th International Conference on Pattern Recognition Systems (ICPRS-21)
dc.relation.eventtype proceeding
dc.identifier.publicationfirstpage 1
dc.identifier.publicationlastpage 8
dc.identifier.publicationtitle Multiple Object Tracking for Robust Quantitative Analysis of Passenger Motion While Boarding and Alighting a Metropolitan Train
dc.identifier.uxxi CC/0000032476
dc.affiliation.dpto UC3M. Departamento de Informática
dc.affiliation.grupoinv UC3M. Grupo de Investigación: Inteligencia Artificial Aplicada (GIAA)
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