融合
计算机科学
代表(政治)
答疑
人工智能
情报检索
数据挖掘
自然语言处理
语言学
法学
政治学
政治
哲学
作者
Yuanhao Zou,Zhaozheng Yin
标识
DOI:10.1109/cvpr52734.2025.02758
摘要
Medical Visual Question Answering (Med-Vqa) is a challenging task that requires a deep understanding of both medical images and textual questions. Although recent works leveraging Medical Vision-Language Pre-Training (Med-Vlp) have shown strong performance on the Med-Vqa task, there is still no unified solution for modality alignment, and the issue of hard negatives remains underexplored. Additionally, commonly used knowledge fusion techniques for Med-Vqa may introduce irrelevant information. In this work, we propose a framework to address these challenges through three key contributions: (1) a unified solution for heterogeneous modality alignments across multiple levels, modalities, views, and stages, leveraging methods like contrastive learning and optimal transport theory; (2) a hard negative mining method that employs soft labels for multi-modality alignments and enforces the hard negative pair discrimination; and (3) a Gated Cross-Attention Module for Med-Vqa that integrates the answer vocabulary as prior knowledge and selects relevant information from it. Our framework outperforms the previous state-of-the-art on widely used Med-Vqa datasets like RAD-VQA, SLAKE, PathVQA and VQA-2019. The code is available at https://github.com/AlexCo1d/AMiF
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