SILC: Improving Vision Language Pretraining with Self-Distillation

Image-Text pretraining on web-scale image caption datasets has become the default recipe for open vocabulary classification and retrieval models thanks to the success of CLIP and its variants. Several works have also used CLIP features for dense prediction tasks and have shown the emergence of open-set abilities. However, the contrastive objective used by these models only focuses on image-text alignment and does not incentivise image feature learning for dense prediction tasks. In this work, we introduce SILC, a novel framework for vision language pretraining. SILC improves image-text contrastive learning with the simple addition of local-to-global correspondence learning by self-distillation. We show that distilling local image features from an exponential moving average (EMA) teacher model significantly improves model performance on dense predictions tasks like detection and segmentation, while also providing improvements on image-level tasks such as classification and retrieval. SILC models sets a new state of the art for zero-shot classification, few shot classification, image and text retrieval, zero-shot segmentation, and open vocabulary segmentation. We further show that SILC features greatly benefit open vocabulary detection, captioning and visual question answering.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Open Vocabulary Semantic Segmentation ADE20K-150 SILC mIoU 37.7 # 2
Open Vocabulary Semantic Segmentation ADE20K-847 SILC mIoU 15.0 # 2
Open Vocabulary Semantic Segmentation PASCAL Context-459 SILC mIoU 25.8 # 1
Open Vocabulary Semantic Segmentation PASCAL Context-59 SILC mIoU 63.5 # 1
Open Vocabulary Semantic Segmentation PascalVOC-20 SILC mIoU 97.6 # 1
Open Vocabulary Semantic Segmentation PascalVOC-20b SILC mIoU 82.5 # 1

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