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Main Authors: Li, Li, Peng, Yingzhe, Yang, Xu, Cheng, Ruoxi, Xu, Haiyang, Yan, Ming, Huang, Fei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.08710
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author Li, Li
Peng, Yingzhe
Yang, Xu
Cheng, Ruoxi
Xu, Haiyang
Yan, Ming
Huang, Fei
author_facet Li, Li
Peng, Yingzhe
Yang, Xu
Cheng, Ruoxi
Xu, Haiyang
Yan, Ming
Huang, Fei
contents We propose a novel embedding-based captioning metric termed as L-CLIPScore that can be used for efficiently evaluating caption quality and training captioning model. L-CLIPScore is calculated from a lightweight CLIP (L-CLIP), which is a dual-encoder architecture compressed and distilled from CLIP. To compress, we apply two powerful techniques which are weight multiplexing and matrix decomposition for reducing the parameters of encoders and word embedding matrix, respectively. To distill, we design a novel multi-modal Similarity Regulator (SR) loss to transfer more vision-language alignment knowledge. Specifically, SR loss amplifies the multi-modal embedding similarity if the given image-text pair is matched and diminishes the similarity if the pair is non-matched. By compressing and distilling by this novel SR loss, our L-CLIP achieves comparable multi-modal alignment ability to the original CLIP while it requires fewer computation resources and running time. We carry out exhaustive experiments to validate the efficiency and effectiveness of L-CLIPScore when using it as the judge to evaluate caption quality. We also discover that when using L-CLIPScore as the supervisor to train the captioning model, it should be mixed up by an n-gram-based metric and meanwhile analyze why using L-CLIPScore only will cause fail training.
format Preprint
id arxiv_https___arxiv_org_abs_2507_08710
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle L-CLIPScore: a Lightweight Embedding-based Captioning Metric for Evaluating and Training
Li, Li
Peng, Yingzhe
Yang, Xu
Cheng, Ruoxi
Xu, Haiyang
Yan, Ming
Huang, Fei
Computer Vision and Pattern Recognition
We propose a novel embedding-based captioning metric termed as L-CLIPScore that can be used for efficiently evaluating caption quality and training captioning model. L-CLIPScore is calculated from a lightweight CLIP (L-CLIP), which is a dual-encoder architecture compressed and distilled from CLIP. To compress, we apply two powerful techniques which are weight multiplexing and matrix decomposition for reducing the parameters of encoders and word embedding matrix, respectively. To distill, we design a novel multi-modal Similarity Regulator (SR) loss to transfer more vision-language alignment knowledge. Specifically, SR loss amplifies the multi-modal embedding similarity if the given image-text pair is matched and diminishes the similarity if the pair is non-matched. By compressing and distilling by this novel SR loss, our L-CLIP achieves comparable multi-modal alignment ability to the original CLIP while it requires fewer computation resources and running time. We carry out exhaustive experiments to validate the efficiency and effectiveness of L-CLIPScore when using it as the judge to evaluate caption quality. We also discover that when using L-CLIPScore as the supervisor to train the captioning model, it should be mixed up by an n-gram-based metric and meanwhile analyze why using L-CLIPScore only will cause fail training.
title L-CLIPScore: a Lightweight Embedding-based Captioning Metric for Evaluating and Training
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.08710