Skip to main content

Major ANPR installations for Lector Vision

Spanish vision systems company Lector Vision has seen the demand for its automatic number plate recognition (ANPR) systems rise in the past few months. The company has deployed over 70 ANPR parking systems for Spanish airport authority AENA at Madrid and Bilbao airports, using its Access Eye multi lane/multi plate combined camera and CPU systems and Access Eye remote processing cameras. A minimum of two cameras per parking lane have been installed, together with management software to handle image vir
April 23, 2014 Read time: 2 mins
Spanish vision systems company 7545 Lector Vision has seen the demand for its automatic number plate recognition (ANPR) systems rise in the past few months.

The company has deployed over 70 ANPR parking systems for Spanish airport authority AENA at Madrid and Bilbao airports, using its Access Eye multi lane/multi plate combined camera and CPU systems and Access Eye remote processing cameras.

A minimum of two cameras per parking lane have been installed, together with management software to handle image virtualisation, real time traffic management, user handling, black list handling, plate/ticket comparison at exit, together with statistics and web interface.

The city of Huesca in north eastern Spain has also purchased Traffic Eye ANPR camera systems for traffic management and red light enforcement.  Eighteen ANPR 'all in one' systems, which include black and white and colour cameras as well as an internal CPU have been deployed for traffic management and old town access control, while a further unit will be used for red light enforcement.  Traffic Eye is capable of detecting red light offences across two adjacent lanes, providing an economic red light enforcement solution.

Lector Vision has also deployed over twenty Access Eye ANPR systems in Chile and a further twelve in Colombia at Santa Fe Mall in Medellin.

For more information on companies in this article

Related Content

  • Tattile unveils Vega1 and the Smartaid
    March 20, 2018
    Leading Italian ITS company and machine vision specialist Tattile has unveiled two major new innovations for the global traffic and enforcement market: the Vega1 and the Smartaid. The Vega1, a dual channel camera built in an extra-compact case to reduce installation impact, is mainly targeted to single lane vehicle tracking, traffic limited areas and priority lanes, as well as surveillance and access control and congestion charge areas.
  • Communication: the future of machine vision
    May 30, 2013
    Jason Barnes asks leading machine vision industry figures what they consider to be the educational barriers to the technology’s increased uptake by the ITS sector. The recent rush by some organisations within the ITS sector to associate themselves with the term ‘machine vision’ underlines just how important the technology has become in a relatively short space of time. However, despite the technology having been applied in certain traffic management applications for some years, there remains a significant s
  • Selecting the right camera for safety or security
    January 30, 2012
    Machine vision systems offer great variety of function and performance. Teledyne DALSA product manager Manuel Romero describes 10 key criteria to aid selection of advanced camera technology for safety or security applications. There are many ways in which machine vision systems can enhance safety and security in transportation, but the ultimate results will only be as good as the image produced. Success relies on correct selection of the camera of such systems, as the features and performance required vary
  • SPONSORED CONTENT: Using AI to achieve real traffic intelligence
    June 3, 2020
    The application of artificial intelligence has the potential to transform the performance of vision-based systems used for a wide and growing set of applications. These include vehicle presence detection and identification, count and classification, and enforcement, explains Roy Czinku of International Road Dynamics