Ren Sheng, Guo Kehua, Zhou Xiaokang, Hu Bin, Zhu Feihong, Luo Entao
IEEE/ACM Trans Comput Biol Bioinform. 2023 Jul-Aug;20(4):2598-2609. doi: 10.1109/TCBB.2022.3212343. Epub 2023 Aug 10.
Medical images are an important basis for doctors to diagnose diseases, but some medical images have low resolution due to hardware technology and cost constraints. Super-resolution technology can reconstruct low-resolution medical images into high-resolution images and enhance the quality of low-resolution images, thus assisting doctors in diagnosing diseases. However, traditional super-resolution methods mainly learn the mapping relationships among modal pixels from low resolution to high resolution, lacking the learning of high-level semantic features, resulting in a lack of understanding and utilization of semantic information, such as reconstructed objects, object attributes, and spatial relationships between two objects. In this paper, we propose a medical image super-resolution method based on semantic perception transfer learning. First, we propose a novel semantic perception super-resolution method that empowers super-resolution models to perceive high-level semantics by transferring features of the image description generation network in natural language processing. Second, we construct a semantic feature extraction network and an image description generation network and comprehensively utilized image and text modal data to learn transferable, high-level semantic features. Third, we train an end-to-end, semantic perception super-resolution model by fusing dynamic perceptual convolution, a semantic extraction network, and distillation polarization self-attention. Experiments show that semantic perception transfer learning can effectively improve the quality of super-resolution reconstruction.
医学图像是医生诊断疾病的重要依据,但由于硬件技术和成本限制,一些医学图像分辨率较低。超分辨率技术可以将低分辨率医学图像重建为高分辨率图像,提高低分辨率图像的质量,从而辅助医生进行疾病诊断。然而,传统的超分辨率方法主要从低分辨率到高分辨率学习模态像素之间的映射关系,缺乏对高级语义特征的学习,导致对语义信息(如重建对象、对象属性以及两个对象之间的空间关系)缺乏理解和利用。在本文中,我们提出了一种基于语义感知迁移学习的医学图像超分辨率方法。首先,我们提出了一种新颖的语义感知超分辨率方法,通过在自然语言处理中转移图像描述生成网络的特征,使超分辨率模型能够感知高级语义。其次,我们构建了一个语义特征提取网络和一个图像描述生成网络,并综合利用图像和文本模态数据来学习可转移的高级语义特征。第三,我们通过融合动态感知卷积、语义提取网络和蒸馏极化自注意力来训练一个端到端的语义感知超分辨率模型。实验表明,语义感知迁移学习能够有效提高超分辨率重建的质量。