Cross-Modal Conditioned Reconstruction for Language-Guided Medical Image Segmentation

Xiaoshuang Huang;Hongxiang Li;Meng Cao;Long Chen;Chenyu You;Dong An
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Abstract

Recent developments underscore the potential of textual information in enhancing learning models for a deeper understanding of medical visual semantics. However, language-guided medical image segmentation still faces a challenging issue. Previous works employ implicit architectures to embed textual information. This leads to segmentation results that are inconsistent with the semantics represented by the language, sometimes even diverging significantly. To this end, we propose a novel cross-modal conditioned Reconstruction for Language-guided Medical Image Segmentation (RecLMIS) to explicitly capture cross-modal interactions, which assumes that well-aligned medical visual features and medical notes can effectively reconstruct each other. We introduce conditioned interaction to adaptively predict patches and words of interest. Subsequently, they are utilized as conditioning factors for mutual reconstruction to align with regions described in the medical notes. Extensive experiments demonstrate the superiority of our RecLMIS, surpassing LViT by 3.74% mIoU on the MosMedData+ dataset and 1.89% mIoU on the QATA-CoV19 dataset. More importantly, we achieve a relative reduction of 20.2% in parameter count and a 55.5% decrease in computational load. The code will be available at https://github.com/ShawnHuang497/RecLMIS.
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语言引导下医学图像分割的跨模态条件重构
最近的发展强调了文本信息在增强学习模型以更深入地理解医学视觉语义方面的潜力。然而,语言引导的医学图像分割仍然面临着一个具有挑战性的问题。以前的作品采用隐式架构嵌入文本信息。这就导致了分词结果与语言所表示的语义不一致,有时甚至会出现明显的分歧。为此,我们提出了一种新的跨模态条件重构用于语言引导医学图像分割(RecLMIS),以明确捕获跨模态交互,该方法假设对齐良好的医学视觉特征和医学笔记可以有效地相互重建。我们引入条件交互来自适应地预测补丁和感兴趣的单词。随后,它们被用作相互重建的条件因素,以与医疗记录中描述的区域保持一致。大量的实验证明了我们的RecLMIS的优越性,在MosMedData+数据集上比LViT高3.74% mIoU,在QATA-CoV19数据集上比LViT高1.89% mIoU。更重要的是,我们实现了参数数量相对减少20.2%和计算负载减少55.5%。代码可在https://github.com/ShawnHuang497/RecLMIS上获得。
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