论文标题
在光学连贯性层析成像造影术中自我监督的批量运动伪影
Self-Supervised Bulk Motion Artifact Removal in Optical Coherence Tomography Angiography
论文作者
论文摘要
光学相干断层扫描(OCTA)是许多生物工程任务中的重要成像方式。然而,八八颗的图像质量通常会因散装运动伪像(BMA)而降低,这是由于受试者的微观动态而引起的,通常是被模糊区域包围的明亮条纹。最先进的方法通常将BMA去除视为基于学习的图像介绍问题,但需要大量具有不平凡注释的训练样本。此外,这些方法丢弃了BMA条纹区域中携带的丰富结构和外观信息。为了解决这些问题,在本文中,我们提出了一种自我监督的内容感知的BMA删除模型。首先,基于梯度的结构信息和外观特征是从BMA区域提取的,并注入模型以捕获更多的连接性。其次,有了容易收集的有缺陷的口罩,该模型以自我监督的方式进行了训练,其中只有清晰的区域用于训练,而BMA区域进行推理。通过嘈杂图像作为参考的结构信息和外观特征,我们的模型可以消除更大的BMA并产生更好的可视化结果。此外,仅涉及掩模有缺陷的2D图像,从而提高了我们方法的效率。在小鼠皮质的八颗八颗是实验表明,我们的模型可以消除大多数BMA,而大小的大小和强度不一致,而以前的方法失败。
Optical coherence tomography angiography (OCTA) is an important imaging modality in many bioengineering tasks. The image quality of OCTA, however, is often degraded by Bulk Motion Artifacts (BMA), which are due to micromotion of subjects and typically appear as bright stripes surrounded by blurred areas. State-of-the-art methods usually treat BMA removal as a learning-based image inpainting problem, but require numerous training samples with nontrivial annotation. In addition, these methods discard the rich structural and appearance information carried in the BMA stripe region. To address these issues, in this paper we propose a self-supervised content-aware BMA removal model. First, the gradient-based structural information and appearance feature are extracted from the BMA area and injected into the model to capture more connectivity. Second, with easily collected defective masks, the model is trained in a self-supervised manner, in which only the clear areas are used for training while the BMA areas for inference. With the structural information and appearance feature from noisy image as references, our model can remove larger BMA and produce better visualizing result. In addition, only 2D images with defective masks are involved, hence improving the efficiency of our method. Experiments on OCTA of mouse cortex demonstrate that our model can remove most BMA with extremely large sizes and inconsistent intensities while previous methods fail.