AI RESEARCH
Evaluation of Randomization through Style Transfer for Enhanced Domain Generalization
arXiv CS.AI
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ArXi:2604.05616v1 Announce Type: cross Deep learning models for computer vision often suffer from poor generalization when deployed in real-world settings, especially when trained on synthetic data due to the well-known Sim2Real gap. Despite the growing popularity of style transfer as a data augmentation strategy for domain generalization, the literature contains unresolved contradictions regarding three key design axes: the diversity of the style pool, the role of texture complexity, and the choice of style source.