用于领域适应的同源成分分析。

IF 10.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Image Processing Pub Date : 2019-07-29 DOI:10.1109/TIP.2019.2929421
Youfa Liu, Weiping Tu, Bo Du, Lefei Zhang, Dacheng Tao
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引用次数: 0

摘要

基于共变移动假设的域适应方法通常只利用一种共同变换来调整边际分布并保留条件分布。然而,一种共同变换可能会导致有用信息的丢失,如源域和目标域中的方差和邻域关系。为了解决这个问题,我们提出了一种名为同源成分分析(HCA)的新方法,试图找到两种完全不同但同源的变换来对齐具有边际信息的分布,并使条件分布得以保留。由于很难找到相应优化问题的闭式解,我们在 Stiefel 流形的背景下通过交替方向最小化方法(ADMM)来解决它们。我们还为半监督情况下的域适应提供了一个泛化误差约束,与只有一个普通变换相比,两个变换更有助于降低这一上限。在合成数据和真实数据上进行的大量实验表明,通过与最先进方法的分类准确性进行比较,我们提出的方法非常有效;弦距和弗罗贝纽斯距的数值证据表明,我们提出的最佳变换是不同的。
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Homologous Component Analysis for Domain Adaptation.

Covariate shift assumption based domain adaptation approaches usually utilize only one common transformation to align marginal distributions and make conditional distributions preserved. However, one common transformation may cause loss of useful information, such as variances and neighborhood relationship in both source and target domain. To address this problem, we propose a novel method called homologous component analysis (HCA) where we try to find two totally different but homologous transformations to align distributions with side information and make conditional distributions preserved. As it is hard to find a closed form solution to the corresponding optimization problem, we solve them by means of the alternating direction minimizing method (ADMM) in the context of Stiefel manifolds. We also provide a generalization error bound for domain adaptation in semi-supervised case and two transformations can help to decrease this upper bound more than only one common transformation does. Extensive experiments on synthetic and real data show the effectiveness of the proposed method by comparing its classification accuracy with the state-of-the-art methods and numerical evidence on chordal distance and Frobenius distance shows that resulting optimal transformations are different.

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来源期刊
IEEE Transactions on Image Processing
IEEE Transactions on Image Processing 工程技术-工程:电子与电气
CiteScore
20.90
自引率
6.60%
发文量
774
审稿时长
7.6 months
期刊介绍: The IEEE Transactions on Image Processing delves into groundbreaking theories, algorithms, and structures concerning the generation, acquisition, manipulation, transmission, scrutiny, and presentation of images, video, and multidimensional signals across diverse applications. Topics span mathematical, statistical, and perceptual aspects, encompassing modeling, representation, formation, coding, filtering, enhancement, restoration, rendering, halftoning, search, and analysis of images, video, and multidimensional signals. Pertinent applications range from image and video communications to electronic imaging, biomedical imaging, image and video systems, and remote sensing.
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