Distant Supervised Centroid Shift: A Simple and Efficient Approach to Visual Domain Adaptation

Jian Liang, R. He, Zhenan Sun, T. Tan
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引用次数: 76

Abstract

Conventional domain adaptation methods usually resort to deep neural networks or subspace learning to find invariant representations across domains. However, most deep learning methods highly rely on large-size source domains and are computationally expensive to train, while subspace learning methods always have a quadratic time complexity that suffers from the large domain size. This paper provides a simple and efficient solution, which could be regarded as a well-performing baseline for domain adaptation tasks. Our method is built upon the nearest centroid classifier, seeking a subspace where the centroids in the target domain are moderately shifted from those in the source domain. Specifically, we design a unified objective without accessing the source domain data and adopt an alternating minimization scheme to iteratively discover the pseudo target labels, invariant subspace, and target centroids. Besides its privacy-preserving property (distant supervision), the algorithm is provably convergent and has a promising linear time complexity. In addition, the proposed method can be readily extended to multi-source setting and domain generalization, and it remarkably enhances popular deep adaptation methods by borrowing the learned transferable features. Extensive experiments on several benchmarks including object, digit, and face recognition datasets validate that our methods yield state-of-the-art results in various domain adaptation tasks.
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远距离监督质心移位:一种简单有效的视觉域自适应方法
传统的领域自适应方法通常采用深度神经网络或子空间学习来寻找跨领域的不变表示。然而,大多数深度学习方法高度依赖于大尺度的源域,并且训练的计算成本很高,而子空间学习方法总是具有二次型的时间复杂度,并且受到大尺度域的影响。本文提供了一种简单有效的解决方案,可作为领域自适应任务的一个性能良好的基线。我们的方法建立在最近的质心分类器上,寻找目标域的质心与源域的质心适度偏移的子空间。具体来说,我们设计了一个不访问源域数据的统一目标,并采用交替最小化方案迭代发现伪目标标签、不变子空间和目标质心。该算法除了具有隐私保护特性(远程监督)外,还具有可证明的收敛性和良好的线性时间复杂度。此外,该方法可以很容易地扩展到多源设置和领域泛化,并且通过借鉴学习到的可转移特征,显著增强了常用的深度自适应方法。在包括对象、数字和人脸识别数据集在内的几个基准上进行的广泛实验验证了我们的方法在各种领域适应任务中产生了最先进的结果。
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