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Billion-Scale Pretraining with Vision Transformers for Multi-Task Visual Representations

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Large-scale pretraining of visual representations has led to state-of-the-art performance on a range of benchmark computer vision tasks, yet the benefits of these techniques at extreme scale in complex production systems has been relatively unexplored. We consider the case of a popular visual discovery product, where these representations are trained with multi-task learning, from use-case specific visual understanding (e.g. skin tone classification) to general representation learning for all visual content (e.g. embeddings for retrieval). In this work, we describe how we (1) generate a dataset with over a billion images via large weakly-supervised pretraining to improve the performance of these visual representations, and (2) leverage Transformers to replace the traditional convolutional backbone, with insights into both system and performance improvements, especially at 1B+ image scale. To support this backbone model, we detail a systematic approach to deriving weakly-supervised image annotations from heterogenous text signals, demonstrating the benefits of clustering techniques to handle the long-tail distribution of image labels. Through a comprehensive study of offline and online evaluation, we show that large-scale Transformer-based pretraining provides significant benefits to industry computer vision applications. The model is deployed in a production visual shopping system, with 36% improvement in top-1 relevance and 23% improvement in click-through volume. We conduct extensive experiments to better understand the empirical relationships between Transformer-based architectures, dataset scale, and the performance of production vision systems.

Josh Beal, Hao-Yu Wu, Dong Huk Park, Andrew Zhai, Dmitry Kislyuk• 2021

Related benchmarks

TaskDatasetResultRank
ClassificationImageNet 1k (test val)
Top-1 Accuracy84.1
138
Image ClassificationObjectNet (test)
R@150.7
43
Image ClassificationTen image classification tasks
AP@189.7
6
Image RetrievalVisual Shopping
Visual Shopping P@154.7
6
Image RetrievalFlashlight
Flashlight AP@2074.3
6
Image RetrievalLens
AP@20 (Lens)26.7
6
Visual Product RetrievalVisual Shopping End-to-End Human Evaluation
Extremely Similar Rate@123.9
6
Visual SearchVisual Shopping (Offline)
P@154.7
6
Visual Shopping RecommendationVisual Shopping A/B experiment (online)
Conversion Volume Lift0.22
2
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