论文标题
MDREG-NET:使用完全卷积的网络具有深度自我诉讼
MDReg-Net: Multi-resolution diffeomorphic image registration using fully convolutional networks with deep self-supervision
论文作者
论文摘要
我们提出了一种差异图像登记算法,以学习在自我监督的学习设置下使用完全卷积网络(FCN)进行注册的图像对之间的空间变换。通过最大化固定图像和扭曲的移动图像之间的图像相似性度量,通过最大化图像的相似性度量,可以在图像对之间进行训练,以估计图像对之间的差异空间变换,类似于常规的图像注册算法。它是在多分辨率图像注册框架中实现的,可以在不同图像分辨率上优化和学习空间转换,并通过深度的自我设计共同和逐步地分辨率,以更好地处理图像之间的大变形。空间高斯平滑核与FCN集成在一起,以产生足够光滑的变形场,以实现差异图像登记。特别是,以更粗的分辨率学到的空间转换用于扭曲运动图像,随后将其用于在更精细的分辨率上学习增量转换。该过程递归地进行了完整的图像分辨率,并且累积的转换是以最好的分辨率扭曲运动图像的最终转换。用于注册高分辨率3D结构脑磁共振(MR)图像的实验结果表明,通过我们的方法训练的图像注册网络可在几秒钟内获得鲁棒的,差异图像注册的结果,与最先进的图像注册算法相比,精确度提高了。
We present a diffeomorphic image registration algorithm to learn spatial transformations between pairs of images to be registered using fully convolutional networks (FCNs) under a self-supervised learning setting. The network is trained to estimate diffeomorphic spatial transformations between pairs of images by maximizing an image-wise similarity metric between fixed and warped moving images, similar to conventional image registration algorithms. It is implemented in a multi-resolution image registration framework to optimize and learn spatial transformations at different image resolutions jointly and incrementally with deep self-supervision in order to better handle large deformation between images. A spatial Gaussian smoothing kernel is integrated with the FCNs to yield sufficiently smooth deformation fields to achieve diffeomorphic image registration. Particularly, spatial transformations learned at coarser resolutions are utilized to warp the moving image, which is subsequently used for learning incremental transformations at finer resolutions. This procedure proceeds recursively to the full image resolution and the accumulated transformations serve as the final transformation to warp the moving image at the finest resolution. Experimental results for registering high resolution 3D structural brain magnetic resonance (MR) images have demonstrated that image registration networks trained by our method obtain robust, diffeomorphic image registration results within seconds with improved accuracy compared with state-of-the-art image registration algorithms.