Multimodal medical images are widely used by clinicians and physicians to analyze and retrieve complementary information from high-resolution images in a non-invasive manner. The loss of corresponding image resolution degrades the overall performance of medical image diagnosis. Deep learning based single image super resolution (SISR) algorithms has revolutionized the overall diagnosis framework by continually improving the architectural components and training strategies associated with convolutional neural networks (CNN) on low-resolution images. However, existing work lacks in two ways: i) the SR output produced exhibits poor texture details, and often produce blurred edges, ii) most of the models have been developed for a single modality, hence, require modification to adapt to a new one. This work addresses (i) by proposing generative adversarial network (GAN) with deep multi-attention modules to learn high-frequency information from low-frequency data. Existing approaches based on the GAN have yielded good SR results; however, the texture details of their SR output have been experimentally confirmed to be deficient for medical images particularly. The integration of wavelet transform (WT) and GANs in our proposed SR model addresses the aforementioned limitation concerning textons. The WT divides the LR image into multiple frequency bands, while the transferred GAN utilizes multiple attention and upsample blocks to predict high-frequency components. Moreover, we present a learning technique for training a domain-specific classifier as a perceptual loss function. Combining multi-attention GAN loss with a perceptual loss function results in a reliable and efficient performance. Applying the same model for medical images from diverse modalities is challenging, our work addresses (ii) by training and performing on several modalities via transfer learning.
翻译:临床医生和医生广泛使用多式医学图像,以非侵入方式从高清晰度图像中分析和检索补充信息; 相应图像分辨率的丧失导致医疗图像诊断总体性能下降; 深度学习的单一图像超分辨率算法使总体诊断框架发生革命,不断改进与低清晰度图像动态神经网络有关的建筑构件和培训战略; 然而,现有工作缺乏两种方式:(一) SR产出产生的纹理细节较差,往往产生模糊的边缘;(二) 大多数模型是为单一模式开发的,因此,需要修改以适应新的模式。 这项工作地址(一) 提出具有深层多功能模块的基因化对抗网络(GAN),以从低清晰度数据中学习高频信息。 以GAN为基础的现有方法产生了良好的SR结果;然而,其SR产出的纹理细节经实验证实,特别缺乏医学图像。 将Swalete模型(WT)和GAN图像从一个不同版本版本版本转换成一个新的版本模式, 将一个高清晰度版本的GAN运行模式转换成一个高频版本。