Dual modality prompt learning for visual question-grounded answering in robotic surgery

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Visual Computing for Industry Biomedicine and Art Pub Date : 2024-04-22 DOI:10.1186/s42492-024-00160-z
Yue Zhang, Wanshu Fan, Peixi Peng, Xin Yang, Dongsheng Zhou, Xiaopeng Wei
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Abstract

With recent advancements in robotic surgery, notable strides have been made in visual question answering (VQA). Existing VQA systems typically generate textual answers to questions but fail to indicate the location of the relevant content within the image. This limitation restricts the interpretative capacity of the VQA models and their ability to explore specific image regions. To address this issue, this study proposes a grounded VQA model for robotic surgery, capable of localizing a specific region during answer prediction. Drawing inspiration from prompt learning in language models, a dual-modality prompt model was developed to enhance precise multimodal information interactions. Specifically, two complementary prompters were introduced to effectively integrate visual and textual prompts into the encoding process of the model. A visual complementary prompter merges visual prompt knowledge with visual information features to guide accurate localization. The textual complementary prompter aligns visual information with textual prompt knowledge and textual information, guiding textual information towards a more accurate inference of the answer. Additionally, a multiple iterative fusion strategy was adopted for comprehensive answer reasoning, to ensure high-quality generation of textual and grounded answers. The experimental results validate the effectiveness of the model, demonstrating its superiority over existing methods on the EndoVis-18 and EndoVis-17 datasets.
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机器人手术中视觉问题解答的双模式提示学习
随着机器人手术的不断发展,视觉问题解答(VQA)技术也取得了长足进步。现有的视觉问题解答系统通常会生成问题的文本答案,但无法指出相关内容在图像中的位置。这一局限性限制了 VQA 模型的解释能力及其探索特定图像区域的能力。为解决这一问题,本研究提出了一种用于机器人手术的 VQA 模型,该模型能够在预测答案时定位特定区域。本研究从语言模型中的提示学习中汲取灵感,开发了一种双模态提示模型,以增强精确的多模态信息交互。具体来说,该模型引入了两个互补提示器,将视觉和文本提示有效地整合到模型的编码过程中。视觉互补提示器将视觉提示知识与视觉信息特征相结合,以指导精确定位。文本互补提示器将视觉信息与文本提示知识和文本信息相统一,引导文本信息更准确地推断答案。此外,还采用了多重迭代融合策略进行综合答案推理,以确保高质量地生成文本答案和落地答案。实验结果验证了该模型的有效性,证明其在 EndoVis-18 和 EndoVis-17 数据集上优于现有方法。
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