Authors
Yulin Wang, Gao Huang, Shiji Song, Xuran Pan, Yitong Xia, Cheng Wu
Publication date
2021
Journal
IEEE Transactions on Pattern Analysis and Machine Intelligence (TPAMI)
Description
Data augmentation is widely known as a simple yet surprisingly effective technique for regularizing deep networks. Conventional data augmentation schemes, e.g., flipping, translation or rotation, are low-level, data-independent and class-agnostic operations, leading to limited diversity for augmented samples. To this end, we propose a novel semantic data augmentation algorithm to complement traditional approaches. The proposed method is inspired by the intriguing property that deep networks are effective in learning linearized features, i.e., certain directions in the deep feature space correspond to meaningful semantic transformations, e.g., changing the background or view angle of an object. Based on this observation, translating training samples along many such directions in the feature space can effectively augment the dataset for more diversity. To implement this idea, we first introduce a sampling based …
Total citations
20192020202120222023202418448410482
Scholar articles
Y Wang, X Pan, S Song, H Zhang, G Huang, C Wu - Advances in Neural Information Processing Systems, 2019
Y Wang, G Huang, S Song, X Pan, Y Xia, C Wu - IEEE Transactions on Pattern Analysis and Machine …, 2021