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Towards synthetic AI training data for image classification in intralogistic settings
2022
Obtaining annotated data for proper training of AI image classifiers remains a challenge for successful deployment in industrial settings. As a promising alternative to handcrafted annotations, synthetic training data generation has grown in popularity. However, in most cases the pipelines used to generate this data are not of universal nature and have to be redesigned for different domain applications. This requires a detailed formulation of the domain through a semantic scene grammar. We aim
doi:10.15480/882.4071
fatcat:qmu7ecnomrahdnr2egdk574vja