Jeong Seungwoo, Ko Wonjun, Mulyadi Ahmad Wisnu, Suk Heung-Il
IEEE Trans Pattern Anal Mach Intell. 2024 Jan;46(1):171-184. doi: 10.1109/TPAMI.2023.3320125. Epub 2023 Dec 5.
Modeling non-euclidean data is drawing extensive attention along with the unprecedented successes of deep neural networks in diverse fields. Particularly, a symmetric positive definite matrix is being actively studied in computer vision, signal processing, and medical image analysis, due to its ability to learn beneficial statistical representations. However, owing to its rigid constraints, it remains challenging to optimization problems and inefficient computational costs, especially, when incorporating it with a deep learning framework. In this paper, we propose a framework to exploit a diffeomorphism mapping between Riemannian manifolds and a Cholesky space, by which it becomes feasible not only to efficiently solve optimization problems but also to greatly reduce computation costs. Further, for dynamic modeling of time-series data, we devise a continuous manifold learning method by systematically integrating a manifold ordinary differential equation and a gated recurrent neural network. It is worth noting that due to the nice parameterization of matrices in a Cholesky space, training our proposed network equipped with Riemannian geometric metrics is straightforward. We demonstrate through experiments over regular and irregular time-series datasets that our proposed model can be efficiently and reliably trained and outperforms existing manifold methods and state-of-the-art methods in various time-series tasks.
随着深度神经网络在各个领域取得前所未有的成功,对非欧几里得数据的建模正受到广泛关注。特别是,对称正定矩阵因其能够学习有益的统计表示,在计算机视觉、信号处理和医学图像分析中得到了积极研究。然而,由于其严格的约束条件,优化问题仍然具有挑战性,计算成本也很高,尤其是在将其与深度学习框架结合时。在本文中,我们提出了一个框架,利用黎曼流形和乔列斯基空间之间的微分同胚映射,通过这种映射,不仅可以有效地解决优化问题,还可以大大降低计算成本。此外,对于时间序列数据的动态建模,我们通过系统地整合流形常微分方程和门控循环神经网络,设计了一种连续流形学习方法。值得注意的是,由于乔列斯基空间中矩阵的良好参数化,训练我们提出的配备黎曼几何度量的网络非常简单。我们通过对规则和不规则时间序列数据集的实验表明,我们提出的模型可以高效可靠地训练,并且在各种时间序列任务中优于现有的流形方法和最先进的方法。