Abstract:Image registration is one of the most underlined processes in medical image analysis. Recently, convolutional neural networks (CNNs) have shown significant potential in both affine and deformable registration. However, the lack of voxel-wise ground truth challenges the training of an accurate CNN-based registration. In this work, we implement a CNN-based mutual information neural estimator for image registration that evaluates the registration outputs in an unsupervised manner. Based on the estimator, we propose an end-to-end registration framework, denoted as MIRegNet, to realize one-shot affine and deformable registration. Furthermore, we propose a weakly supervised network combining mutual information with the Dice similarity coefficients (DSC) loss. We employed a dataset consisting of 190 pairs of 3D pulmonary CT images for validation. Results showed that the MIRegNet obtained an average Dice score of 0.960 for registering the pulmonary images, and the Dice score was further improved to 0.963 when the DSC was included for a weakly supervised learning of image registration.
Abstract:Deep convolutional networks (CNNs) have achieved great success in face completion to generate plausible facial structures. These methods, however, are limited in maintaining global consistency among face components and recovering fine facial details. On the other hand, reflectional symmetry is a prominent property of face image and benefits face recognition and consistency modeling, yet remaining uninvestigated in deep face completion. In this work, we leverage two kinds of symmetry-enforcing subnets to form a symmetry-consistent CNN model (i.e., SymmFCNet) for effective face completion. For missing pixels on only one of the half-faces, an illumination-reweighted warping subnet is developed to guide the warping and illumination reweighting of the other half-face. As for missing pixels on both of half-faces, we present a generative reconstruction subnet together with a perceptual symmetry loss to enforce symmetry consistency of recovered structures. The SymmFCNet is constructed by stacking generative reconstruction subnet upon illumination-reweighted warping subnet, and can be end-to-end learned from training set of unaligned face images. Experiments show that SymmFCNet can generate high quality results on images with synthetic and real occlusion, and performs favorably against state-of-the-arts.