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Few-sample Multi-organ Abdominal Image Segmentation with Mean Teacher Model

机译:均值教师模型的少样本多器官腹部图像分割

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Medical segmentation is a significant task since it provides valuable information for diagnosis. In the recent years, convolutional neural networks have achieved great success in this field. However, the number of medical images is often limited which cannot support large networks to be trained. Thus, overfitting is much more common in medical images than other tasks. Also, to get annotated images is very costly and time-consuming. We stimulate an extreme condition where the number of the sample is so limited that we adopt a Mean Teacher Model to avoid overfitting. We build two models - student and teacher, with same structure and alternatively trained. We apply consistency loss to update the parameters of student and use Exponential Moving Average to compute parameters of teacher from student model. All code can be found in https://github.com/cpystan/MT-Model.
机译:医学细分是一项重要的任务,因为它为诊断提供了有价值的信息。近年来,卷积神经网络在该领域取得了巨大的成功。然而,医学图像的数量通常是有限的,这不能支持要训练的大型网络。因此,过度拟合在医学图像中比其他任务更为常见。另外,获取带注释的图像非常昂贵且耗时。我们会激发极端情况,即样本数量非常有限,以至于我们采用均值教师模型来避免过度拟合。我们建立了两个模型-学生和老师,具有相同的结构或经过交替训练。我们应用一致性损失来更新学生的参数,并使用指数移动平均值从学生模型中计算教师的参数。所有代码都可以在https://github.com/cpystan/MT-Model中找到。

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