PreFLMR_ViT-G / README.md
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metadata
library_name: transformers
license: mit
language:
  - en

PreFLMR model card

Model Description

  • Model type: PreFLMR is an open-source model for multimodal knowledge retrieval. It is a transformer-based model that uses a combination of text and image inputs to retrieve relevant documents from a large corpus.
  • Language(s) (NLP): English
  • License: MIT License

Paper and resources for more detail

Uses

Direct Use

This model can be used directly to retrieve documents from a large corpus using a combination of text and image input queries. The retrieval useage can be found in the official implementation.

Downstream Use

This model can be used combined with language models to create a retrieval-augmented language model. The useage for Knowledge-based VQA can be found in RAVQA

How to Get Started with the Model

For details of training, indexing and performing retrieval, please refer to here.

Training datasets

The model is pretrained on three types of tasks with a total of nine datasets:

  1. Image to Text retrieval: WIT, KVQA and CC3M
  2. Question to Text retrieval: MSMARCO
  3. Image & Question to Text retrieval: LLaVA, OVEN, OKVQA, Infoseek and E-VQA

These datasets were converted to retrieval format. For details on the dataset split and conversion process, please refer to the paper PreFLMR: Scaling Up Fine-Grained Late-Interaction Multi-modal Retrievers. We will release the proprocessed datasets soon.

Evaluation datasets

We evaluate our models on WIT, LLaVA, OVEN, KVQA, IGLUE (subset of WIT), Infoseek, E-VQA, OKVQA and MSMARCO.

Model Vision Encoder Text Encoder Checkpoint Name No. Param. WIT LLaVA OVEN KVQA IGLUE Infoseek E-VQA OKVQA MSMARCO
PreFLMR ViT-B Base-v2 LinWeizheDragon/PreFLMR_ViT-B 327M 41.7 67.2 46.3 28.6 57.3 48.8 67.9 66.1 79.5
PreFLMR ViT-L Base-v2 LinWeizheDragon/PreFLMR_ViT-L 543M 60.5 71.8 59.8 43.6 69.2 57.9 70.8 68.5 78.7
PreFLMR ViT-G Base-v2 LinWeizheDragon/PreFLMR_ViT-G 2.1B 61.5 72.4 63.4 42.1 71.5 59.6 73.1 68.6 78.6

For the evaluation metrics, WIT uses Recall@10, IGLUE uses Recall@1, and all the rest datasets use Recall@5.

Citation

BibTeX:

@article{Lin_Mei_Chen_Byrne_2024, 
        title={PreFLMR: Scaling Up Fine-Grained Late-Interaction Multi-modal Retrievers}, 
        url={http://arxiv.org/abs/2402.08327}, 
        number={arXiv:2402.08327}, 
        publisher={arXiv}, 
        author={Lin, Weizhe and Mei, Jingbiao and Chen, Jinghong and Byrne, Bill}, 
        year={2024}}