Recent advances in neuroscience have highlighted the effectiveness of multi-modal medical data for investigating certain pathologies and understanding human cognition. However, obtaining full sets of different modalities is limited by various factors, such as long acquisition times, high examination costs and artifact suppression. In addition, the complexity, high dimensionality and heterogeneity of neuroimaging data remains another key challenge in leveraging existing randomized scans effectively, as data of the same modality is often measured differently by different machines. There is a clear need to go beyond the traditional imaging-dependent process and synthesize anatomically specific target-modality data from a source input. In this paper, we propose to learn dedicated features that cross both intre- and intra-modal variations using a novel CSC$\ell_4$Net. Through an initial unification of intra-modal data in the feature maps and multivariate canonical adaptation, CSC$\ell_4$Net facilitates feature-level mutual transformation. The positive definite Riemannian manifold-penalized data fidelity term further enables CSC$\ell_4$Net to reconstruct missing measurements according to transformed features. Finally, the maximization $\ell_4$-norm boils down to a computationally efficient optimization problem. Extensive experiments validate the ability and robustness of our CSC$\ell_4$Net compared to the state-of-the-art methods on multiple datasets.
翻译:神经科学的近期进展凸显了多模式医学数据在调查某些病理学和理解人类认知方面的有效性。然而,获得全套不同模式的数据受到多种因素的限制,如长期获取时间、高检查成本和抑制人工制品等。此外,神经成像数据的复杂性、高度维度和异质性仍然是有效利用现有随机扫描的另一个重大挑战,因为同一模式的数据往往由不同机器不同计量。显然需要超越传统的成像依赖进程,从源投入中合成具体的解剖数据。在本文件中,我们提议学习跨越内型和内型变化的专门特征,使用新型的CSC$\ell_4美元网络。通过初步统一地利用地貌图中的内部数据以及多变式的卡通适应,CSC$\ell_4美元网络的数据往往能促进地平级相互转换。肯定的里曼式多元化数据忠实化术语进一步使CSC$_4美元网络能够将内型的内型和内部型变异型变异性变异性变异性化数据校正化。最后,CSC_40美元网络能够将我们缺失的快速化模型化数据测试能力再化,最终改造。