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Tattile adds Vega 1 to range of vehicle identification systems

Italian ITS specialist Tattile expands its range of vehicle identification systems by the new Vega 1, an intelligent camera specifically designed for single lane vehicle tracking, traffic limited areas and priority lanes, as well as congestion charge. The core of the new Vega 1 with an onboard automatic number plate recognition (ANPR) engine, is a dual channel camera built in a compact case which allows an easy setup to minimise the installation and maintenance times. The local storage allows the solution
October 25, 2018 Read time: 2 mins

Italian ITS specialist 592 Tattile expands its range of vehicle identification systems by the new Vega 1, an intelligent camera specifically designed for single lane vehicle tracking, traffic limited areas and priority lanes, as well as congestion charge. The core of the new Vega 1 with an onboard automatic number plate recognition (ANPR) engine, is a dual channel camera built in a compact case which allows an easy setup to minimise the installation and maintenance times. The local storage allows the solution to work stand alone in case the connectivity is interrupted.

The single lane intelligent traffic system provides colour video streaming via standard RTSP protocol.

The company says Vega 1 comes with a working distance up to 25m and does not require any external IR lighting. The high sensitivity image sensors allow ANPR reading and video streaming in harsh and low light conditions.

Standard features also come with optional functionalities which provide further information on the vehicles tracked by additional vehicle brand, vehicle class and vehicle colour identification. There are options to connect the Vega 1 to WiFi, LTE and GPS.

These standard functionalities and additional features allow Vega 1 to serve as a collector of all relevant data needed for vehicle identification and road control, the company adds.

Stand: 1C61

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