Rethinking Rotation in Self-Supervised Contrastive Learning: Adaptive Positive or Negative Data Augmentation
Rotation is frequently listed as a candidate for data augmentation in contrastive learning but seldom provides satisfactory improvements. We argue that this is because the rotated image is always treated as either positive or negative. The semantics of an image can be rotation-invariant or rotation-...
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Zusammenfassung: | Rotation is frequently listed as a candidate for data augmentation in
contrastive learning but seldom provides satisfactory improvements. We argue
that this is because the rotated image is always treated as either positive or
negative. The semantics of an image can be rotation-invariant or
rotation-variant, so whether the rotated image is treated as positive or
negative should be determined based on the content of the image. Therefore, we
propose a novel augmentation strategy, adaptive Positive or Negative Data
Augmentation (PNDA), in which an original and its rotated image are a positive
pair if they are semantically close and a negative pair if they are
semantically different. To achieve PNDA, we first determine whether rotation is
positive or negative on an image-by-image basis in an unsupervised way. Then,
we apply PNDA to contrastive learning frameworks. Our experiments showed that
PNDA improves the performance of contrastive learning. The code is available at
\url{ https://github.com/AtsuMiyai/rethinking_rotation}. |
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DOI: | 10.48550/arxiv.2210.12681 |