论文标题
感知一致性超声图像超级分辨率通过自我监督的循环gan
Perception Consistency Ultrasound Image Super-resolution via Self-supervised CycleGAN
论文作者
论文摘要
由于传感器的局限性,透射介质和超声的内在特性,超声成像的质量始终不是理想的,尤其是其低空间分辨率。为了解决这种情况,由于具有强大的近似能力,最近为超声图像超级分辨率(SR)开发了深度学习网络。但是,大多数当前监督的SR方法不适用于超声医学图像,因为医疗图像样本始终很少见,通常在现实中没有低分辨率(LR)和高分辨率(HR)培训对。在这项工作中,基于自upervision和循环生成的对抗网络(Cyclegan),我们提出了一种新的感知一致性超声图像超声超分辨率(SR)方法,该方法仅需要LR超声数据,并且可以确保生成的SR的重新启动图像与原始的LR LR Image和VICE VERSA保持一致。我们首先通过图像增强产生了测试超声LR图像的人力资源父亲和LR儿子,然后充分利用LR-SR-LR和HR-LR-SR的循环损失以及鉴别器的对抗性特征,以促进发电机以促进发电机以产生更好的感知一致的SR结果。基准CCA-US和CCA-US数据集中的PSNR/IFC/SSIM,推理效率和视觉效果的评估说明了我们提出的方法有效,并且优于其他最新方法。
Due to the limitations of sensors, the transmission medium and the intrinsic properties of ultrasound, the quality of ultrasound imaging is always not ideal, especially its low spatial resolution. To remedy this situation, deep learning networks have been recently developed for ultrasound image super-resolution (SR) because of the powerful approximation capability. However, most current supervised SR methods are not suitable for ultrasound medical images because the medical image samples are always rare, and usually, there are no low-resolution (LR) and high-resolution (HR) training pairs in reality. In this work, based on self-supervision and cycle generative adversarial network (CycleGAN), we propose a new perception consistency ultrasound image super-resolution (SR) method, which only requires the LR ultrasound data and can ensure the re-degenerated image of the generated SR one to be consistent with the original LR image, and vice versa. We first generate the HR fathers and the LR sons of the test ultrasound LR image through image enhancement, and then make full use of the cycle loss of LR-SR-LR and HR-LR-SR and the adversarial characteristics of the discriminator to promote the generator to produce better perceptually consistent SR results. The evaluation of PSNR/IFC/SSIM, inference efficiency and visual effects under the benchmark CCA-US and CCA-US datasets illustrate our proposed approach is effective and superior to other state-of-the-art methods.