2024
DOI: 10.3389/fnbot.2024.1382406
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Brain-inspired semantic data augmentation for multi-style images

Wei Wang,
Zhaowei Shang,
Chengxing Li

Abstract: Data augmentation is an effective technique for automatically expanding training data in deep learning. Brain-inspired methods are approaches that draw inspiration from the functionality and structure of the human brain and apply these mechanisms and principles to artificial intelligence and computer science. When there is a large style difference between training data and testing data, common data augmentation methods cannot effectively enhance the generalization performance of the deep model. To solve this p… Show more

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