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Efficient Oct Image Segmentation Using Neural Architecture Search

机译:使用神经架构搜索的有效Oct图像分割

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In this work, we propose a Neural Architecture Search (NAS) for retinal layer segmentation in Optical Coherence Tomography (OCT) scans. We incorporate the Unet architecture in the NAS framework as its backbone for the segmentation of the retinal layers in our collected and preprocessed OCT image dataset. At the pre-processing stage, we conduct super resolution and image processing techniques on the raw OCT scans to improve the quality of the raw images. For our search strategy, different primitive operations are suggested to find the down- & up-sampling cell blocks, and the binary gate method is applied to make the search strategy practical for the task in hand. We empirically evaluated our method on our in-house OCT dataset. The experimental results demonstrate that the self-adapting NAS-Unet architecture substantially outperformed the competitive human-designed architecture by achieving 95.4% in mean Intersection over Union metric and 78.7% in Dice similarity coefficient.
机译:在这项工作中,我们提出了一种神经结构搜索(NAS),用于光学相干断层扫描(OCT)扫描中的视网膜层分割。我们将Unet体系结构纳入NAS框架,作为其骨干网,用于在收集和预处理的OCT图像数据集中分割视网膜层。在预处理阶段,我们对原始OCT扫描进行超分辨率和图像处理技术,以提高原始图像的质量。对于我们的搜索策略,建议使用不同的原始操作来找到向下采样和向上采样的单元块,然后应用二进制门方法使搜索策略适用于手头的任务。我们根据内部OCT数据集对我们的方法进行了经验评估。实验结果表明,自适应的NAS-Unet架构在性能上远远优于竞争性的人工设计架构,与Union metric的平均交集达到95.4%,Dice相似系数达到78.7%。

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