DS1 spectrogram: VLRM: Vision-Language Models act as Reward Models for Image Captioning

VLRM: Vision-Language Models act as Reward Models for Image Captioning

2404.01911

Authors

Alexander Kunitsyn,Andrei Ivaniuta,Maksim Dzabraev

Abstract

In this work, we present an unsupervised method for enhancing an image captioning model (in our case, BLIP2) using reinforcement learning and vision-language models like CLIP and BLIP2-ITM as reward models. The RL-tuned model is able to generate longer and more comprehensive descriptions.

Our model reaches impressive 0.90 R@1 CLIP Recall score on MS-COCO Carpathy Test Split. Weights are available at https://huggingface.co/sashakunitsyn/vlrm-blip2-opt-2.7b.

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