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Xerox video analytics detects vehicle occupancy

Xerox is showcasing its Vehicle Passenger Detection System at the ITS America Annual Meeting. The vehicle occupancy detection system – a 2015 Best of ITS Awards Finalist – uses video analytics to identify the number of occupants in a vehicle with 95% accuracy, at speeds ranging from stop and go to 100 mph. Geometric algorithms detect whether a seat is vacant or occupied. If the setting on the HOT lane transponder doesn’t match with the number of occupants, the system will take a snapshot of the vehicle’s
June 3, 2015 Read time: 2 mins
4186 Xerox is showcasing its Vehicle Passenger Detection System at the ITS America Annual Meeting. The vehicle occupancy detection system – a 2015 Best of ITS Awards Finalist – uses video analytics to identify the number of occupants in a vehicle with 95% accuracy, at speeds ranging from stop and go to 100 mph.

Geometric algorithms detect whether a seat is vacant or occupied. If the setting on the HOT lane transponder doesn’t match with the number of occupants, the system will take a snapshot of the vehicle’s license plate and alert law enforcement to the violator.

To ensure driver privacy, facial images are redacted. Law enforcement and court personnel can view the unredacted photos with appropriate authorization.

Xerox debuted the system at ITS World Congress in Detroit, and during the past year has run successful pilot programs in Halifax, Nova Scotia; Orange County and San Diego, California; Denver, Colorado; and a border crossing between France and Switzerland. Xerox expects the first commercial deployment of the system within the next 6 months.

At the ITS America Annual Meeting, Xerox also sponsored the Entrepreneurial Village, which enables start-ups to continue changing the face of transportation.

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