Summary
Our project’s main objective is to develop a decentralized, interoperable and flexible system to reduce some operational problems at mass transport systems and to increase their safety.
One of the concerns of Mass Transportation Operators (MTO) worldwide is the significant amount of users that avoid paying (fare dodging), amount that is increasing nowadays (estimated value of €600 million/year).
In the case of rail and metro, the installation of mechanical fare gates activated with magnetic cards helps reducing fare dodging but some users take advantage of the gate closing delay (necessary for safety reasons) and pass right behind the previous user, without validating any ticket whatsoever (tailgating). There is currently no effective solution for this problem except permanent human surveillance at the gates or the frequent deployment of mass controls: a group of inspectors checks every passing user. These mass controls are cumbersome, inconvenient for the paying user and easily avoidable by the fare dodger.
HAL has developed an artificial vision system that automatically detects tailgating and allows the selective interception of the suspected wrong-doer even before they reach the platform.
The system is being developed in collaboration with a globally respected MTO active in Barcelona, FGC (Ferrocarrils de la Generalitat de Catalunya), within their Smart Train program. A pilot under regular operating environment has proven the effectiveness of the system.
With this proposal, we plan to elaborate a detailed feasibility study (Phase 1) that will possibly recommend to opt for Phase 2 funding later on, necessary for extended R&D and for a rapid worldwide dissemination of our solution.
We expect to further expand our artificial vision technology (combined with mobile technology, when convenient) to solve other safety and maintenance challenges in nowadays mass transport operations. A second natural step could well be railway signal detection and monitoring.
One of the concerns of Mass Transportation Operators (MTO) worldwide is the significant amount of users that avoid paying (fare dodging), amount that is increasing nowadays (estimated value of €600 million/year).
In the case of rail and metro, the installation of mechanical fare gates activated with magnetic cards helps reducing fare dodging but some users take advantage of the gate closing delay (necessary for safety reasons) and pass right behind the previous user, without validating any ticket whatsoever (tailgating). There is currently no effective solution for this problem except permanent human surveillance at the gates or the frequent deployment of mass controls: a group of inspectors checks every passing user. These mass controls are cumbersome, inconvenient for the paying user and easily avoidable by the fare dodger.
HAL has developed an artificial vision system that automatically detects tailgating and allows the selective interception of the suspected wrong-doer even before they reach the platform.
The system is being developed in collaboration with a globally respected MTO active in Barcelona, FGC (Ferrocarrils de la Generalitat de Catalunya), within their Smart Train program. A pilot under regular operating environment has proven the effectiveness of the system.
With this proposal, we plan to elaborate a detailed feasibility study (Phase 1) that will possibly recommend to opt for Phase 2 funding later on, necessary for extended R&D and for a rapid worldwide dissemination of our solution.
We expect to further expand our artificial vision technology (combined with mobile technology, when convenient) to solve other safety and maintenance challenges in nowadays mass transport operations. A second natural step could well be railway signal detection and monitoring.
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More information & hyperlinks
Web resources: | https://cordis.europa.eu/project/id/663110 |
Start date: | 01-01-2015 |
End date: | 31-05-2015 |
Total budget - Public funding: | 71 429,00 Euro - 50 000,00 Euro |
Cordis data
Original description
Our project’s main objective is to develop a decentralized, interoperable and flexible system to reduce some operational problems at mass transport systems and to increase their safety.One of the concerns of Mass Transportation Operators (MTO) worldwide is the significant amount of users that avoid paying (fare dodging), amount that is increasing nowadays (estimated value of €600 million/year).
In the case of rail and metro, the installation of mechanical fare gates activated with magnetic cards helps reducing fare dodging but some users take advantage of the gate closing delay (necessary for safety reasons) and pass right behind the previous user, without validating any ticket whatsoever (tailgating). There is currently no effective solution for this problem except permanent human surveillance at the gates or the frequent deployment of mass controls: a group of inspectors checks every passing user. These mass controls are cumbersome, inconvenient for the paying user and easily avoidable by the fare dodger.
HAL has developed an artificial vision system that automatically detects tailgating and allows the selective interception of the suspected wrong-doer even before they reach the platform.
The system is being developed in collaboration with a globally respected MTO active in Barcelona, FGC (Ferrocarrils de la Generalitat de Catalunya), within their Smart Train program. A pilot under regular operating environment has proven the effectiveness of the system.
With this proposal, we plan to elaborate a detailed feasibility study (Phase 1) that will possibly recommend to opt for Phase 2 funding later on, necessary for extended R&D and for a rapid worldwide dissemination of our solution.
We expect to further expand our artificial vision technology (combined with mobile technology, when convenient) to solve other safety and maintenance challenges in nowadays mass transport operations. A second natural step could well be railway signal detection and monitoring.
Status
CLOSEDCall topic
IT-1-2014-1Update Date
27-10-2022
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