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Carmen® OCR FleetCode

Carmen® OCR FleetCode
Pricing: No Info
OCR, logistics, supply chain, container tracking, software library

Carmen OCR ContainerCode is a software tool that helps recognize container codes with high accuracy, up to 99.7%. It works with different coding standards like ISO 6346 (BIC), MOCO, and ILU. This makes it great for tracking containers across various transportation modes, including road, rail, and maritime.

Key Features

Carmen OCR ContainerCode has several key features that make it stand out.

It can recognize container codes with up to 99.7% accuracy. It supports ISO 6346 (BIC), MOCO, and ILU codes. It works with Windows and Linux operating systems. It integrates seamlessly into existing systems via a user friendly API. It supports C, C++, C#, Java, and Visual Basic. It effectively processes images from multiple sources, ensuring optimal OCR results regardless of camera position or lighting conditions.

Benefits

The software provides several benefits.

It improves efficiency and accuracy in logistics operations. It offers reliable data extraction across diverse environments. It provides robust PDF functionality integration across various platforms.

Use Cases

Carmen OCR ContainerCode is an invaluable tool for logistics operations, enhancing container visibility and streamlining supply chain management. It is particularly useful for logistics and supply chain management as it automates the recognition of container codes, improving efficiency and accuracy. It ensures reliable data extraction across diverse environments for port and depot operations. It provides robust PDF functionality integration across various platforms for system integrators and OEMs.

Cost/Price

For more information, including pricing, support, and training options, visit the Adaptive Recognition website.

Funding

Funding details of the product are not provided in the article.

Reviews/Testimonials

User testimonials or reviews are not provided in the article.

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