Deformable image registration is widely utilized in medical image analysis, but most proposed methods fail in the situation of complex deformations. In this paper, we pre-sent a cascaded feature warping network to perform the coarse-to-fine registration. To achieve this, a shared-weights encoder network is adopted to generate the feature pyramids for the unaligned images. The feature warping registration module is then used to estimate the deformation field at each level. The coarse-to-fine manner is implemented by cascading the module from the bottom level to the top level. Furthermore, the multi-scale loss is also introduced to boost the registration performance. We employ two public benchmark datasets and conduct various experiments to evaluate our method. The results show that our method outperforms the state-of-the-art methods, which also demonstrates that the cascaded feature warping network can perform the coarse-to-fine registration effectively and efficiently.
翻译:在医学图像分析中广泛使用变形图像登记,但大多数拟议方法在复杂变形情况下都失败了。 在本文中,我们先推出一个级联特征扭曲网络,以进行粗到软的登记。 为此,我们采用了一个共享加权编码网络,以生成不匹配图像的特征金字塔。然后使用特征扭曲登记模块来估计各级的变形场。通过从底层到顶层对模块进行级联到底层的连锁连接,采用粗到底部的方式。此外,还引入了多尺度损失来提高注册性能。我们采用了两个公共基准数据集,并进行了各种实验来评估我们的方法。结果显示,我们的方法超过了最新工艺方法,这也表明,级联式特征扭曲网络能够有效和高效地进行粗化到底层的注册。