We explore different curriculum learning methods for training convolutional neural networks on the task of deformable pairwise 3D medical image registration. To the best of our knowledge, we are the first to attempt to improve performance by training medical image registration models using curriculum learning, starting from an easy training setup in the first training stages, and gradually increasing the complexity of the setup. On the one hand, we consider two existing curriculum learning approaches, namely curriculum dropout and curriculum by smoothing. On the other hand, we propose a novel and simple strategy to achieve curriculum, namely to use purposely blurred images at the beginning, then gradually transit to sharper images in the later training stages. Our experiments with an underlying state-of-the-art deep learning model show that curriculum learning can lead to superior results compared to conventional training.
翻译:我们探索了不同的课程学习方法,用于培训关于变形对称3D医学图像登记任务的进化神经网络。 据我们所知,我们首先尝试利用课程学习培训医学图像登记模式,从最初培训阶段的简易培训开始,逐步增加设置的复杂性,以此提高医学图像登记模式的绩效。一方面,我们考虑两种现有的课程学习方法,即课程辍学和课程平滑。另一方面,我们提出了实现课程设置的新颖而简单的战略,即在课程设置开始时使用特意模糊的图像,然后在后期培训阶段逐步转换到更清晰的图像。我们用最先进的深层次学习模式进行的实验显示,课程学习可以带来优于常规培训的结果。