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Data for: HNC: Leveraging Hard Negative Captions towards Models with Fine-Grained Visual-Linguistic Comprehension Capabilities

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DataCite Commons2024-07-08 更新2024-07-13 收录
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https://darus.uni-stuttgart.de/citation?persistentId=doi:10.18419/darus-4341
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资源简介:
Image-Text-Matching (ITM) is one of the defacto methods of learning generalized representations from a large corpus in Vision and Language (VL). However, due to the weak association between the web-collected image–text pairs, models fail to show fine-grained understanding of the combined semantics of these modalities. To this end, we propose Hard Negative Captions (HNC): an automatically created dataset containing foiled hard negative captions for ITM training towards achieving fine-grained cross-modal comprehension in VL. Additionally, we provide a challenging manually-created test set for benchmarking models on a fine-grained cross-modal mismatch with varying levels of compositional complexity. Our results show the effectiveness of training on HNC by improving the models’ zero-shot capabilities in detecting mismatches on diagnostic tasks and performing robustly under noisy visual input scenarios. Also, we demonstrate that HNC models yield a comparable or better initialization for fine-tuning. The dataset consists of image-caption pairs stored in the JSON data format. The captions describe fine-grained aspects of the corresponding images and each positive caption is associated with exactly one hard negative caption.
提供机构:
DaRUS
创建时间:
2024-07-03
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