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Pneumothorax Image Segmentation and Prediction with UNet++ and MSOF Strategy

机译:与UNET ++和MSOF战略的气胸图像分割和预测

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Deep learning is becoming more and more popular to solve image segmentation tasks in medical image processing community because of the incredible advantages in deep feature representation and nonlinear problem modeling. However, most existing deep learning methods based segmentation are implemented by combing deep, semantic, coarse-grained feature maps from the decoder sub network with shallow, low-level, fine-grained feature maps from the encoder sub-network, which are not up to the mustard of medical image segmentation. To solve the above-mentioned problem, an innovative end-to-end Pneumothorax Segmentation (PS) method based on UNet++ is proposed, where change maps could be learned from scratch using existing annotated datasets. And the fusion strategy of multiple side outputs is applied to combine change maps from different semantic levels. The high efficiency and availability of our proposed method are proved with SIIM-ACR Pneumothorax Segmentation dataset. Plenty of experimental results have shown that our proposed approach outperforms many cutting-edge methods.
机译:由于深度特征表示和非线性问题建模的令人难以置信的优势,深入学习在医学图像处理社区中解决图像分割任务越来越受欢迎。然而,基于现有的大多数深学习方法分割由深梳理实现,语义,粗粒度的功能从解码器子网络与浅,低级别的,细粒度的功能从编码器子网络,这是不涨地图地图到医学图像分割的芥末。为了解决上述问题,提出了一种基于UNET ++的创新的端到端气胸分段(PS)方法,可以使用现有的注释数据集从划痕中学习变更映射。并且应用多个侧输出的融合策略来组合来自不同语义级别的变化图。通过Siim-ACR气胸分段数据集证明了我们所提出的方法的高效率和可用性。大量的实验结果表明,我们所提出的方法优于许多尖端方法。

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