Learning from Children: Improving Image-Caption Pretraining via Curriculum
Image-caption pretraining has been quite successfully used for downstream vision tasks like zero-shot image classification and object detection. However, image-caption pretraining is still a hard problem -- it requires multiple concepts (nouns) from captions to be aligned to several objects in image...
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Zusammenfassung: | Image-caption pretraining has been quite successfully used for downstream
vision tasks like zero-shot image classification and object detection. However,
image-caption pretraining is still a hard problem -- it requires multiple
concepts (nouns) from captions to be aligned to several objects in images. To
tackle this problem, we go to the roots -- the best learner, children. We take
inspiration from cognitive science studies dealing with children's language
learning to propose a curriculum learning framework. The learning begins with
easy-to-align image caption pairs containing one concept per caption. The
difficulty is progressively increased with each new phase by adding one more
concept per caption. Correspondingly, the knowledge acquired in each learning
phase is utilized in subsequent phases to effectively constrain the learning
problem to aligning one new concept-object pair in each phase. We show that
this learning strategy improves over vanilla image-caption training in various
settings -- pretraining from scratch, using a pretrained image or/and
pretrained text encoder, low data regime etc. |
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DOI: | 10.48550/arxiv.2305.17540 |