MEDVQA-GI 2023:改善胃肠道视觉问答的多模态学习与图像增强

T. M. Thai, A. T. Vo, Hao K. Tieu, Linh Bui, T. Nguyen
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引用次数: 1

摘要

近年来,人工智能在医学和疾病诊断中发挥了重要作用,有许多应用被提及,其中之一就是医学视觉问答(MedVQA)。通过结合计算机视觉和自然语言处理,MedVQA系统可以帮助专家根据给定的问题从医学图像中提取相关信息,并提供精确的诊断答案。ImageCLEFmed-MEDVQA-GI-2023挑战赛在胃肠道领域进行视觉问答任务,其中包括胃镜和结肠镜图像。我们的团队通过提出一种带有图像增强的多模态学习方法来解决挑战的任务1,以提高胃肠道图像的VQA性能。采用BERT编码器和基于卷积神经网络(CNN)和Transformer结构的不同预训练视觉模型建立多模态结构,对问题和内窥镜图像进行特征提取。本研究的结果突出了基于transformer的视觉模型相对于cnn的优势,并证明了图像增强过程的有效性,8个视觉模型中有6个获得了更好的F1-Score。我们的最佳方法利用BERT+BEiT融合和图像增强的优势,在开发测试集上达到87.25%的准确率和91.85%的F1-Score,在私有测试集上也取得了良好的效果,准确率为82.01%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UIT-Saviors at MEDVQA-GI 2023: Improving Multimodal Learning with Image Enhancement for Gastrointestinal Visual Question Answering
In recent years, artificial intelligence has played an important role in medicine and disease diagnosis, with many applications to be mentioned, one of which is Medical Visual Question Answering (MedVQA). By combining computer vision and natural language processing, MedVQA systems can assist experts in extracting relevant information from medical image based on a given question and providing precise diagnostic answers. The ImageCLEFmed-MEDVQA-GI-2023 challenge carried out visual question answering task in the gastrointestinal domain, which includes gastroscopy and colonoscopy images. Our team approached Task 1 of the challenge by proposing a multimodal learning method with image enhancement to improve the VQA performance on gastrointestinal images. The multimodal architecture is set up with BERT encoder and different pre-trained vision models based on convolutional neural network (CNN) and Transformer architecture for features extraction from question and endoscopy image. The result of this study highlights the dominance of Transformer-based vision models over the CNNs and demonstrates the effectiveness of the image enhancement process, with six out of the eight vision models achieving better F1-Score. Our best method, which takes advantages of BERT+BEiT fusion and image enhancement, achieves up to 87.25% accuracy and 91.85% F1-Score on the development test set, while also producing good result on the private test set with accuracy of 82.01%.
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