Generalizing Visual Question Answering from Synthetic to Human-Written Questions via a Chain of QA with a Large Language Model
- URL: http://arxiv.org/abs/2401.06400v3
- Date: Thu, 22 Aug 2024 16:46:33 GMT
- Title: Generalizing Visual Question Answering from Synthetic to Human-Written Questions via a Chain of QA with a Large Language Model
- Authors: Taehee Kim, Yeongjae Cho, Heejun Shin, Yohan Jo, Dongmyung Shin,
- Abstract summary: We propose a new method called it chain of QA for human-written questions (CoQAH)
CoQAH utilizes a sequence of QA interactions between a large language model and a VQA model trained on synthetic data to reason and derive logical answers for human-written questions.
We tested the effectiveness of CoQAH on two types of human-written VQA datasets for 3D-rendered and chest X-ray images.
- Score: 4.41132900194195
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Visual question answering (VQA) is a task where an image is given, and a series of questions are asked about the image. To build an efficient VQA algorithm, a large amount of QA data is required which is very expensive. Generating synthetic QA pairs based on templates is a practical way to obtain data. However, VQA models trained on those data do not perform well on complex, human-written questions. To address this issue, we propose a new method called {\it chain of QA for human-written questions} (CoQAH). CoQAH utilizes a sequence of QA interactions between a large language model and a VQA model trained on synthetic data to reason and derive logical answers for human-written questions. We tested the effectiveness of CoQAH on two types of human-written VQA datasets for 3D-rendered and chest X-ray images and found that it achieved state-of-the-art accuracy in both types of data. Notably, CoQAH outperformed general vision-language models, VQA models, and medical foundation models with no finetuning.
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