DIN Standards Committee Building and Civil Engineering
Geographic information — Training data markup language for artificial intelligence — Part 1: Conceptual model standard
Abstract
Within the context of training data for Earth Observation (EO) Artificial Intelligence Machine Learning (AI/ML), this document defines a conceptual model that: — establishes a UML model with a target of maximizing the interoperability and usability of EO imagery training data; — specifies different AI/ML tasks and labels in EO in terms of supervised learning, including scene level, object level and pixel level tasks; — describes the permanent identifier, version, licence, training data size, measurement or imagery used for annotation; — specifies a description of quality (e.g. training data errors, training data representativeness, quality measures) and the provenance (e.g. agents who perform the labelling, labelling procedure).
Begin
2024-06-14
WI
00287151
Planned document number
DIN EN ISO 19178-1
Project number
00519782
Responsible national committee
NA 005-03-03 AA - Geographic Information (national mirror committee for CEN/TC 287 and ISO/TC 211)
Responsible european committee
CEN/TC 287 - Geographic Information