Deep learning has become the leading approach to assisted target recognition. While these methods typically require large amounts of labeled training data, domain adaptation (DA) or transfer learning (TL) enables these algorithms to transfer knowledge from a labelled (source) data set to an unlabelled but related (target) data set of interest. DA enables networks to overcome the distribution mismatch between the source and target that leads to poor generalization in the target domain. DA techniques align these distributions by minimizing a divergence measurement between source and target, making the transfer of knowledge from source to target possible. While these algorithms have advanced significantly in recent years, most do not explicitly leverage global data manifold structure in aligning the source and target. We propose to leverage global data structure by applying a topological data analysis (TDA) technique called persistent homology to TL. In this paper, we examine the use of persistent homology in a domain adversarial (DAd) convolutional neural network (CNN) architecture. The experiments show that aligning persistence alone is insufficient for transfer, but must be considered along with the lifetimes of the topological singularities. In addition, we found that longer lifetimes indicate robust discriminative features and more favorable structure in data. We found that existing divergence minimization based approaches to DA improve the topological structure, as indicated over a baseline without these regularization techniques. We hope these experiments highlight how topological structure can be leveraged to boost performance in TL tasks.
翻译:虽然这些方法通常需要大量标记的培训数据,但域适应(DA)或转移学习(TL)使这些算法能够使这些算法能够将知识从标签的(源)数据集转移至无标签的、但相关的(目标)数据集。DA使网络能够克服源和目标之间的分布不匹配,导致目标领域的概括化不力。DA技术通过最大限度地缩小源和目标之间的差异度来调整这些分布,使知识从源向目标的转移成为可能。虽然这些算法近年来取得了显著的进展,但大多数算法并没有明确地利用全球数据多重结构来调整源和目标。我们提议通过对TL应用称为持久性同质的表层数据分析(TDA)技术来利用全球数据结构。在本文中,我们研究了在对抗领域(DAd)的动态神经网络结构中使用持久性同性差的问题。实验表明,单靠源和知识源的转移是不够的,但必须结合顶层奇特征的生命周期来考虑。此外,我们发现,更长期的驱动力分析方法表明,基于这些顶层标准的结构是稳健的。