Model pre-training is a cornerstone of modern visual recognition systems. Although fully supervised pre-training on datasets like ImageNet is still the de-facto standard, recent studies suggest that large-scale weakly supervised pre-training can outperform fully supervised approaches. This paper revisits weakly-supervised pre-training of models using hashtag supervision with modern versions of residual networks and the largest-ever dataset of images and corresponding hashtags. We study the performance of the resulting models in various transfer-learning settings including zero-shot transfer. We also compare our models with those obtained via large-scale self-supervised learning. We find our weakly-supervised models to be very competitive across all settings, and find they substantially outperform their self-supervised counterparts. We also include an investigation into whether our models learned potentially troubling associations or stereotypes. Overall, our results provide a compelling argument for the use of weakly supervised learning in the development of visual recognition systems. Our models, Supervised Weakly through hashtAGs (SWAG), are available publicly.
Revisiting Weakly Supervised Pre-Training of Visual Perception Models
Weakly-supervised pre-training with hashtag labels achieves competitive performance in visual recognition tasks, outperforming self-supervised methods.
- Year
- 2022
- Venue
- CVPR 2022 1
- Authors
- 10
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2201.08371v2ARXIV-DEFAULT
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