Carmen ADR Description

Carmen® ADR is an advanced software library that specializes in the automatic identification of Hazard Identification Numbers (HIN), or Kemler codes, found on vehicles carrying hazardous materials. By effectively interpreting these codes, it contributes to improved road safety and optimizes traffic management systems. The software is capable of processing diverse input formats, including static images and real-time video streams, and it operates on several platforms, including Windows and Linux. Its adaptable API allows for effortless incorporation into current infrastructures, proving to be an essential resource for traffic surveillance, border protection, and emergency response activities. Furthermore, the ability to integrate with various technologies ensures that it meets the evolving needs of safety and security in transportation.

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Company Details

Company:
Adaptive Recognition
Year Founded:
1991
Headquarters:
Hungary
Website:
adaptiverecognition.com

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Product Details

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On-Premises
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Online Support

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