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Learning and Incorporating Shape Models for Semantic Segmentation

机译:学习和结合语义分割的形状模型

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Semantic segmentation has been popularly addressed using Fully convolutional networks (FCN) (e.g. U-Net) with impressive results and has been the forerunner in recent segmentation challenges. However, FCN approaches do not necessarily incorporate local geometry such as smoothness and shape, whereas traditional image analysis techniques have benefitted greatly by them in solving segmentation and tracking problems. In this work, we address the problem of incorporating shape priors within the FCN segmentation framework. We demonstrate the utility of such a shape prior in robust handling of scenarios such as loss of contrast and artifacts. Our experiments show ≈ 5% improvement over U-Net for the challenging problem of ultrasound kidney segmentation.
机译:语义分割已经使用完全卷积的网络(例如,U-Net),具有令人印象深刻的结果,并且在最近的细分挑战中一直是先行者。 然而,FCN方法不一定包含局部几何形状,例如平滑性和形状,而传统的图像分析技术在解决分割和跟踪问题方面具有大大受益。 在这项工作中,我们解决了在FCN分段框架内纳入形状前导者的问题。 我们展示了在稳健处理方案的这种形状的效用,例如丢失对比和伪影。 我们的实验显示≈超声肾分割挑战性问题的U-Net改善。

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