What Large Language Models Bring to Text-rich VQA?

Liu, Xuejing, Tang, Wei, Ni, Xinzhe, Lu, Jinghui, Zhao, Rui, Li, Zechao, Tan, Fei
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引用次数: 1

Abstract

Text-rich VQA, namely Visual Question Answering based on text recognition in the images, is a cross-modal task that requires both image comprehension and text recognition. In this work, we focus on investigating the advantages and bottlenecks of LLM-based approaches in addressing this problem. To address the above concern, we separate the vision and language modules, where we leverage external OCR models to recognize texts in the image and Large Language Models (LLMs) to answer the question given texts. The whole framework is training-free benefiting from the in-context ability of LLMs. This pipeline achieved superior performance compared to the majority of existing Multimodal Large Language Models (MLLM) on four text-rich VQA datasets. Besides, based on the ablation study, we find that LLM brings stronger comprehension ability and may introduce helpful knowledge for the VQA problem. The bottleneck for LLM to address text-rich VQA problems may primarily lie in visual part. We also combine the OCR module with MLLMs and pleasantly find that the combination of OCR module with MLLM also works. It's worth noting that not all MLLMs can comprehend the OCR information, which provides insights into how to train an MLLM that preserves the abilities of LLM.
大型语言模型为富文本VQA带来什么?
富文本的VQA,即基于图像文本识别的视觉问答,是一项既需要图像理解又需要文本识别的跨模态任务。在这项工作中,我们重点研究了基于法学硕士的方法在解决这个问题方面的优势和瓶颈。为了解决上述问题,我们分离了视觉和语言模块,我们利用外部OCR模型来识别图像中的文本,并利用大型语言模型(llm)来回答给定文本的问题。整个框架是免培训的,受益于法学硕士的上下文能力。在四个文本丰富的VQA数据集上,与大多数现有的多模态大型语言模型(Multimodal Large Language Models, MLLM)相比,该管道取得了卓越的性能。此外,通过消融研究,我们发现LLM带来了更强的理解能力,可以为VQA问题引入有用的知识。LLM解决文本丰富的VQA问题的瓶颈可能主要在于可视化部分。我们还将OCR模块与MLLM相结合,并愉快地发现OCR模块与MLLM相结合也是有效的。值得注意的是,并非所有的mlm都能理解OCR信息,这为如何训练一个保留LLM能力的mlm提供了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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