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Heterogeneous Domain Adaptation via Covariance Structured Feature Translators

机译:通过协方差结构特征翻译器的异构域适应

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摘要

Domain adaptation (DA) and transfer learning with statistical property description is very important in image analysis and data classification. This article studies the domain adaptive feature representation problem for the heterogeneous data, of which both the feature dimensions and the sample distributions across domains are so different that their features cannot be matched directly. To transfer the discriminant information efficiently from the source domain to the target domain, and then enhance the classification performance for the target data, we first introduce two projection matrices specified for different domains to transform the heterogeneous features into a shared space. We then propose a joint kernel regression model to learn the regression variable, which is called feature translator in this article. The novelty focuses on the exploration of optimal experimental design (OED) to deal with the heterogeneous and nonlinear DA by seeking the covariance structured feature translators (CSFTs). An approximate and efficient method is proposed to compute the optimal data projections. Comprehensive experiments are conducted to validate the effectiveness and efficacy of the proposed model. The results show the state-of-the-art performance of our method in heterogeneous DA.
机译:域适应(DA)与统计属性的传输学习描述在图像分析和数据分类中非常重要。本文研究异构数据的域自适应特征表示问题,其中特征尺寸和域跨域的示例分布如此不同,它们的功能不能直接匹配。为了将判别信息有效地从源域转移到目标域,然后增强目标数据的分类性能,我们首先向不同的域引入指定的两个投影矩阵,以将异构特征转换为共享空间。然后,我们提出了一个联合内核回归模型来学习回归变量,在本文中称为特征翻译。这部新颖性侧重于探索最佳实验设计(OED)来处理异构和非线性DA,通过寻求协方差结构化特征翻译(CSFTS)。提出了一种近似有效的方法来计算最佳数据投影。进行综合实验以验证拟议模型的有效性和功效。结果显示了我们在异构DA中的方法的最先进的性能。

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