Publication | Closed Access
Improving Weakly Supervised Visual Grounding by Contrastive Knowledge Distillation
57
Citations
51
References
2021
Year
Unknown Venue
Natural Language ProcessingVisual Phrase GroundingImage AnalysisMachine VisionData ScienceMachine LearningPattern RecognitionObject DetectionGeneric Object DetectorEngineeringKnowledge DistillationVisual GroundingVision Language ModelDeep LearningComputer Vision
Weakly supervised phrase grounding aims at learning region-phrase correspondences using only image-sentence pairs. A major challenge thus lies in the missing links between image regions and sentence phrases during training. To address this challenge, we leverage a generic object detector at training time, and propose a contrastive learning framework that accounts for both region-phrase and image-sentence matching. Our core innovation is the learning of a region-phrase score function, based on which an image-sentence score function is further constructed. Importantly, our region-phrase score function is learned by distilling from soft matching scores between the detected object names and candidate phrases within an image-sentence pair, while the image-sentence score function is supervised by ground-truth image-sentence pairs. The design of such score functions removes the need of object detection at test time, thereby significantly reducing the inference cost. Without bells and whistles, our approach achieves state-of-the-art results on visual phrase grounding, surpassing previous methods that require expensive object detectors at test time.
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