Is Multimodal Vision Supervision Beneficial To Language? | Awesome Learning to Hash Add your paper to Learning2Hash

Is Multimodal Vision Supervision Beneficial To Language?

Avinash Madasu, Vasudev Lal . 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW) 2023 – 1 citation

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Evaluation Image Retrieval Supervised Unsupervised Video Retrieval

Vision (image and video) - Language (VL) pre-training is the recent popular paradigm that achieved state-of-the-art results on multi-modal tasks like image-retrieval, video-retrieval, visual question answering etc. These models are trained in an unsupervised way and greatly benefit from the complementary modality supervision. In this paper, we explore if the language representations trained using vision supervision perform better than vanilla language representations on Natural Language Understanding and commonsense reasoning benchmarks. We experiment with a diverse set of image-text models such as ALBEF, BLIP, METER and video-text models like ALPRO, Frozen-in-Time (FiT), VIOLET. We compare the performance of language representations of stand-alone text encoders of these models to the language representations of text encoders learnt through vision supervision. Our experiments suggest that vanilla language representations show superior performance on most of the tasks. These results shed light on the current drawbacks of the vision-language models.

Similar Work