Papers by Pengchuan Zhang

2 papers
Coarse-to-Fine Contrastive Learning in Image-Text-Graph Space for Improved Vision-Language Compositionality (2023.emnlp-main)

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Challenge: Recent studies have highlighted severe limitations of contrastive learning models in their ability to perform compositional reasoning over objects, attributes, and relations.
Approach: They propose a graph decomposition framework and negative mining techniques to improve attribute binding and relation understanding of scene graphs.
Outcome: The proposed approach improves attribute binding, relation understanding, generalization, and productivity on multiple benchmarks.
TIGEr: Text-to-Image Grounding for Image Caption Evaluation (D19-1)

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Challenge: Existing metrics based on text-level comparisons fail to assess the quality of captions produced by machines.
Approach: They propose to use a machine-learned text-image grounding model to measure the accuracy of machine-generated captions and their correlation with human judgments.
Outcome: The proposed metric has higher consistency with human judgments and is more accurate than existing metrics.

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