Retinal Optical Coherence Tomography Angiography (OCTA) with high-resolution is important for the quantification and analysis of retinal vasculature. However, the resolution of OCTA images is inversely proportional to the field of view at the same sampling frequency, which is not conducive to clinicians for analyzing larger vascular areas. In this paper, we propose a novel Sparse-based domain Adaptation Super-Resolution network (SASR) for the reconstruction of realistic 6x6 mm2/low-resolution (LR) OCTA images to high-resolution (HR) representations. To be more specific, we first perform a simple degradation of the 3x3 mm2/high-resolution (HR) image to obtain the synthetic LR image. An efficient registration method is then employed to register the synthetic LR with its corresponding 3x3 mm2 image region within the 6x6 mm2 image to obtain the cropped realistic LR image. We then propose a multi-level super-resolution model for the fully-supervised reconstruction of the synthetic data, guiding the reconstruction of the realistic LR images through a generative-adversarial strategy that allows the synthetic and realistic LR images to be unified in the feature domain. Finally, a novel sparse edge-aware loss is designed to dynamically optimize the vessel edge structure. Extensive experiments on two OCTA sets have shown that our method performs better than state-of-the-art super-resolution reconstruction methods. In addition, we have investigated the performance of the reconstruction results on retina structure segmentations, which further validate the effectiveness of our approach.
翻译:具有高分辨率的视网膜光学成像仪(OCTA)对于量化和分析视网膜血管分布图象十分重要。然而,OCTA图像的分辨率与同一采样频率的视场成反比,不利于临床医生分析更大的血管区域。在本文中,我们提议建立一个新型的基于Sparse的域域“适应超分辨率”网络(SASR),以重建现实的 6x6 mm2/Low分辨率(LR) OCTA 图像为高分辨率(HR)表示。更具体地说,我们首先对3x3 mm2/high-分辨率(HR)图像进行简单的降解,以获得合成LRA图像。然后,高效的注册方法用于在6x6 mm2图像范围内对合成LR(3x3mm2)图像进行相应的分析。然后,我们提出一个多级超分辨率模型模型,用于完全超超导地重建合成数据,指导现实的LTRA图像的重建。我们通过基因-Qiral-real 图像结构进行简单的模拟模拟模拟模拟模拟模拟模拟模拟模拟模拟模拟,最终使机能模型模型进行模拟的模型模拟的模拟的模拟模拟模拟的模拟的模拟的图像的模拟。