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A Subspace Based Transfer Joint Matching with Laplacian Regularization for Visual Domain Adaptation

机译:基于子空间的转移关节与可视域改编的Laplacian正常化匹配

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摘要

In a real-world application, the images taken by different cameras with different conditions often incur illumination variation, low-resolution, different poses, blur, etc., which leads to a large distribution difference or gap between training (source) and test (target) images. This distribution gap is challenging for many primitive machine learning classification and clustering algorithms such as k-Nearest Neighbor (k-NN) and k-means. In order to minimize this distribution gap, we propose a novel Subspace based Transfer Joint Matching with Laplacian Regularization (STJML) method for visual domain adaptation by jointly matching the features and re-weighting the instances across different domains. Specifically, the proposed STJML-based method includes four key components: (1) considering subspaces of both domains; (2) instance re-weighting; (3) it simultaneously reduces the domain shift in both marginal distribution and conditional distribution between the source domain and the target domain; (4) preserving the original similarity of data points by using Laplacian regularization. Experiments on three popular real-world domain adaptation problem datasets demonstrate a significant performance improvement of our proposed method over published state-of-the-art primitive and domain adaptation methods.
机译:在真实世界的应用中,不同的摄像机拍摄的图像通常会产生照明变化,低分辨率,不同的姿势,模糊等,这导致训练(源)和测试之间的大分布差异或间隙(目标)图像。这种分配差距对于许多原始机器学习分类和聚类算法,例如K最近邻(k-nn)和k均值是具有挑战性的。为了最大限度地减少该分配差距,我们提出了一种与Laplacian正则化(StJML)方法的新型子空间转移关节,用于通过联合匹配特征并重新加权在不同域中重新加权实例。具体地,所提出的基于STJML的方法包括四个关键组件:(1)考虑两个域的子空间; (2)再加权实例; (3)它同时降低了源域和目标域之间的边缘分布和条件分布的域移位; (4)使用Laplacian正规化保持数据点的原始相似性。三个受欢迎的真实世界域适应问题数据集的实验表明,我们提出的方法在发表的最新原始和域适应方法中提高了我们提出的方法。

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