Simpledoc: Multi-modal Document Understanding With Dual-cue Page Retrieval And Iterative Refinement
2025 Β· Chelsi Jain, Yiran Wu, Yifan Zeng, et al.
Abstract
Document Visual Question Answering (DocVQA) is a practical yet challenging task, which is to ask questions based on documents while referring to multiple pages and different modalities of information, e.g, images and tables. To handle multi-modality, recent methods follow a similar Retrieval Augmented Generation (RAG) pipeline, but utilize Visual Language Models (VLMs) based embedding model to embed and retrieve relevant pages as images, and generate answers with VLMs that can accept an image as input. In this paper, we introduce SimpleDoc, a lightweight yet powerful retrieval - augmented framework for DocVQA. It boosts evidence page gathering by first retrieving candidates through embedding similarity and then filtering and re-ranking these candidates based on page summaries. A single VLM-based reasoner agent repeatedly invokes this dual-cue retriever, iteratively pulling fresh pages into a working memory until the question is confidently answered. SimpleDoc outperforms previous basel
Authors
(none)
Tags
Stats
Related papers
- Enhancing Document VQA Models Via Retrieval-augmented Generation (2025)0.00
- Vdocrag: Retrieval-augmented Generation Over Visually-rich Documents (2025)6.34
- Index Light, Reason Deep: Deferred Visual Ingestion For Visual-dense Document Question Answering (2026)0.00
- Document Haystacks: Vision-language Reasoning Over Piles Of 1000+ Documents (2024)2.83
- Unidoc-rl: Coarse-to-fine Visual RAG With Hierarchical Actions And Dense Rewards (2026)0.00
- Modernvbert: Towards Smaller Visual Document Retrievers (2025)0.00
- Globaldoc: A Cross-modal Vision-language Framework For Real-world Document Image Retrieval And Classification (2023)3.58
- Fine-grained Late-interaction Multi-modal Retrieval For Retrieval Augmented Visual Question Answering (2023)5.24