2020
DOI: 10.48550/arxiv.2003.03669
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Adaptive Offline Quintuplet Loss for Image-Text Matching

Abstract: Existing image-text matching approaches typically leverage triplet loss with online hard negatives to train the model. For each image or text anchor in a training mini-batch, the model is trained to distinguish between a positive and the most confusing negative of the anchor mined from the mini-batch (i.e. online hard negative). This strategy improves the model's capacity to discover fine-grained correspondences and non-correspondences between image and text inputs. However, the above training approach has the… Show more

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