--- library_name: transformers license: mit datasets: - lmms-lab/DocVQA --- ## 1 Introduction DIVE-Doc is a VLM architecture built as a trade-off between end-to-end lightweight architectures and LVLMs for the DocVQA task. Without relying on external tools such as OCR, it processes the inputs in an end-to-end way. It takes an image document and a question as input and returns an answer.
- **Repository:** [GitHub](https://github.com/JayRay5/DIVE-Doc) - **Paper:** [DIVE-Doc: Downscaling foundational Image Visual Encoder into hierarchical architecture for DocVQA](https://openaccess.thecvf.com/content/ICCV2025W/VisionDocs/html/Bencharef_DIVE-Doc_Downscaling_foundational_Image_Visual_Encoder_into_hierarchical_architecture_for_ICCVW_2025_paper.html) ## 2 Model Summary DIVE-Doc is built as a trade-off between end-to-end lightweight architectures and LVLMs. Where the first category has both a lightweight visual encoder and a language decoder, and LVLMs have both a large visual encoder and a large decoder, DIVE-Doc contains a small visual encoder in combination with a large decoder in order to balance model size and performance. It is built by distilling the [SigLIP-400m](https://arxiv.org/abs/2303.15343) visual encoder of [PaliGEMMA](https://arxiv.org/abs/2407.07726) into a small hierarchical [Swin transformer](https://openaccess.thecvf.com/content/ICCV2021/html/Liu_Swin_Transformer_Hierarchical_Vision_Transformer_Using_Shifted_Windows_ICCV_2021_paper) initialized with the weights of [Donut](https://link.springer.com/chapter/10.1007/978-3-031-19815-1_29), while reusing the original [GEMMA](https://arxiv.org/abs/2403.08295) decoder. This enables DIVE‑Doc to reduce its visual encoder’s parameter count by 80%. Moreover, the model is finetuned using LoRA adapters, which have been merged into the base model using [merge_and_unload](https://huggingface.co/docs/peft/main/en/package_reference/lora#peft.LoraModel.merge_and_unload). Trained on the [DocVQA dataset](https://openaccess.thecvf.com/content/WACV2021/html/Mathew_DocVQA_A_Dataset_for_VQA_on_Document_Images_WACV_2021_paper.html) for both the distillation and finetuning steps, this strategy allows DIVE-Doc to be competitive with LVLMs while outperforming ligthweight architectures. ## 3 Quick Start ### Installation ```bash git clone https://github.com/JayRay5/DIVE-Doc.git cd DIVE-Doc conda create -n dive-doc-env python=3.11.5 conda activate dive-doc-env pip install -r requirements.txt ``` ### Inference example using the model repository and gradio In app.py, modify the path variable to "JayRay5/DIVE-Doc-FRD": ```bash if __name__ == "__main__": path = "JayRay5/DIVE-Doc-FRD" app(path) ``` Then run: ```bash python app.py ``` This will start a [gradio](https://www.gradio.app/) web interface where you can use the model. ## Notification ### Direct Use This model is designed to answer a question from a single-page image document and is mostly trained on industrial documents [DocVQA dataset](https://openaccess.thecvf.com/content/WACV2021/html/Mathew_DocVQA_A_Dataset_for_VQA_on_Document_Images_WACV_2021_paper.html). ### Downstream Use This model can be finetuned on other DocVQA datasets such as [InfoGraphVQA](https://openaccess.thecvf.com/content/WACV2022/html/Mathew_InfographicVQA_WACV_2022_paper.html) to improve its performance on infographic documents. ## Citation **BibTeX:** ```bibtex @inproceedings{Bencharef_2025_ICCV, author = {Bencharef, Rayane and Rahiche, Abderrahmane and Cheriet, Mohamed}, title = {DIVE-Doc: Downscaling foundational Image Visual Encoder into hierarchical architecture for DocVQA}, booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV) Workshops}, month = {October}, year = {2025}, pages = {7547-7556} } ``` ## Contact rayane.bencharef.1@ens.etsmtl.ca