IEEE Trans Image Process. 2014 May;23(5):2009-18. doi: 10.1109/TIP.2014.2310992.
We present a novel domain adaptation approach for solving cross-domain pattern recognition problems, i.e., the data or features to be processed and recognized are collected from different domains of interest. Inspired by canonical correlation analysis (CCA), we utilize the derived correlation subspace as a joint representation for associating data across different domains, and we advance reduced kernel techniques for kernel CCA (KCCA) if nonlinear correlation subspace are desirable. Such techniques not only makes KCCA computationally more efficient, potential over-fitting problems can be alleviated as well. Instead of directly performing recognition in the derived CCA subspace (as prior CCA-based domain adaptation methods did), we advocate the exploitation of domain transfer ability in this subspace, in which each dimension has a unique capability in associating cross-domain data. In particular, we propose a novel support vector machine (SVM) with a correlation regularizer, named correlation-transfer SVM, which incorporates the domain adaptation ability into classifier design for cross-domain recognition. We show that our proposed domain adaptation and classification approach can be successfully applied to a variety of cross-domain recognition tasks such as cross-view action recognition, handwritten digit recognition with different features, and image-to-text or text-to-image classification. From our empirical results, we verify that our proposed method outperforms state-of-the-art domain adaptation approaches in terms of recognition performance.
我们提出了一种新颖的领域自适应方法,用于解决跨领域模式识别问题,即要处理和识别的数据或特征来自不同的感兴趣领域。受典型相关分析(CCA)的启发,我们利用导出的相关子空间作为关联不同领域数据的联合表示,如果需要非线性相关子空间,则我们可以推进核典型相关分析(KCCA)的降核技术。这些技术不仅使 KCCA 在计算上更加高效,还可以缓解潜在的过拟合问题。我们不直接在导出的 CCA 子空间中进行识别(如先前基于 CCA 的领域自适应方法所做的那样),而是提倡在该子空间中利用域传输能力,其中每个维度都具有关联跨域数据的独特能力。特别是,我们提出了一种带有相关正则化项的新支持向量机(SVM),称为相关转移 SVM,它将域自适应能力纳入到跨域识别的分类器设计中。我们表明,我们提出的领域自适应和分类方法可以成功应用于各种跨领域识别任务,例如跨视图动作识别、具有不同特征的手写数字识别以及图像到文本或文本到图像分类。从我们的实验结果来看,我们验证了我们提出的方法在识别性能方面优于最先进的领域自适应方法。