论文标题

一个具有平均子空间计算和递归反馈的多阶段框架,用于在线无监督域名

A Multi-stage Framework with Mean Subspace Computation and Recursive Feedback for Online Unsupervised Domain Adaptation

论文作者

Moon, Jihoon, Das, Debasmit, Lee, C. S. George

论文摘要

在本文中,我们解决了在线无监督的域适应性(OUDA)问题,并提出了一个新颖的多阶段框架,以解决目标数据未标记并在线批量批量时解决现实世界中的情况。为了将数据从源和目标域投射到一个共同的子空间中,并实时操纵投影数据,我们的拟议框架机构提出了一种新颖的方法,称为均值subspace(ICMS)技术的增量计算,该方法计算了在Grassmann歧管上的均值子空间的近似值,并且证明是与Karkarkarkar的近似值。此外,从均值目标子空间计算出的转换矩阵被应用于递归反馈阶段的下一个目标数据,将目标数据与源域更接近对齐。转换矩阵的计算和下一目标子空间的预测利用了递归反馈阶段的性能,通过考虑目标子空间在格拉斯曼歧管上的累积时间依赖性。转换的目标数据的标签由预训练的源分类器预测,然后通过转换的数据和预测的标签来更新分类器。进行了六个数据集上的广泛实验,以深入研究每个阶段在我们提出的框架中的效果和贡献及其在分类准确性和计算速度方面对先前方法的效果和贡献。此外,基于传统的基于歧管的学习模型和基于神经网络的学习模型的实验证明了我们提出的框架在各种类型的学习模型中的适用性。

In this paper, we address the Online Unsupervised Domain Adaptation (OUDA) problem and propose a novel multi-stage framework to solve real-world situations when the target data are unlabeled and arriving online sequentially in batches. To project the data from the source and the target domains to a common subspace and manipulate the projected data in real-time, our proposed framework institutes a novel method, called an Incremental Computation of Mean-Subspace (ICMS) technique, which computes an approximation of mean-target subspace on a Grassmann manifold and is proven to be a close approximate to the Karcher mean. Furthermore, the transformation matrix computed from the mean-target subspace is applied to the next target data in the recursive-feedback stage, aligning the target data closer to the source domain. The computation of transformation matrix and the prediction of next-target subspace leverage the performance of the recursive-feedback stage by considering the cumulative temporal dependency among the flow of the target subspace on the Grassmann manifold. The labels of the transformed target data are predicted by the pre-trained source classifier, then the classifier is updated by the transformed data and predicted labels. Extensive experiments on six datasets were conducted to investigate in depth the effect and contribution of each stage in our proposed framework and its performance over previous approaches in terms of classification accuracy and computational speed. In addition, the experiments on traditional manifold-based learning models and neural-network-based learning models demonstrated the applicability of our proposed framework for various types of learning models.

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