Due to the contradiction of medical image processing, that is, the application of medical images is more and more widely and the limitation of medical images is difficult to label, few-shot learning technology has begun to receive more attention in the field of medical image processing. This paper proposes a Cross-Reference Transformer for medical image segmentation, which addresses the lack of interaction between the existing Cross-Reference support image and the query image. It can better mine and enhance the similar parts of support features and query features in high-dimensional channels. Experimental results show that the proposed model achieves good results on both CT dataset and MRI dataset.
翻译:由于医学图像处理的矛盾,即医学图像应用越来越广泛,但标记医学图像的限制越来越大,少样本学习技术已开始在医学图像处理领域受到更多关注。本文提出了一种交叉引用变换器用于医学图像分割,在解决现有交叉参考支持图像与查询图像之间缺乏交互的同时,它也能够更好地挖掘和增强高维通道中支持特征和查询特征的相似部分。实验结果表明,该模型在 CT 数据集和 MRI 数据集上取得了良好的结果。