GSO ISO/IEC 15417:2015

ISO/IEC 15417:2007
Gulf Standard   Current Edition · Approved on 03 September 2015

Information technology -- Automatic identification and data capture techniques -- Code 128 bar code symbology specification

GSO ISO/IEC 15417:2015 Files

English 25 Pages
Current Edition Reference Language
OMR 66.51

GSO ISO/IEC 15417:2015 Scope

This International Standard specifies the requirements for the bar code symbology known as Code 128. It specifies Code 128 symbology characteristics, data character encodation, dimensions, decoding algorithms and the parameters to be defined by applications. It specifies the symbology identifier prefix strings for Code 128 symbols.

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