论文标题

基于多层关节核距离的深层对抗结构域的适应

Deep Adversarial Domain Adaptation Based on Multi-layer Joint Kernelized Distance

论文作者

Mao, Sitong, Chen, Jiaxin, Shen, Xiao, Chung, Fu-lai

论文摘要

域的适应性是指从源数据中学到的模型应用于具有相同类别但分布不同的目标数据的模型。尽管已广泛应用,但源数据和目标数据之间的分布差异可能会大大影响适应性绩效。最近通过采用对抗性学习来解决了这个问题,并且已经报道了独特的适应性绩效。在本文中,提出了一个基于多层关节内核距离度量的深层对抗域的适应模型。通过利用从深网络中提取的抽象功能,$ j $ th目标数据之间的多层关节内核距离(MJKD)预测为$ m $ th类别和$ m'$ th类别的所有源数据。基于MJKD,在每个类别中都使用了类平衡的选择策略来选择最有可能正确分类的目标数据,并使用其伪标签将其视为标记数据。然后,使用对抗性体系结构来绘制新生成的标记训练数据和其余目标数据彼此接近。这样,目标数据本身提供了有价值的信息来增强域的适应性。还提供了对所提出的方法的分析,实验结果表明,所提出的方法比许多最新方法可以实现更好的性能。

Domain adaptation refers to the learning scenario that a model learned from the source data is applied on the target data which have the same categories but different distribution. While it has been widely applied, the distribution discrepancy between source data and target data can substantially affect the adaptation performance. The problem has been recently addressed by employing adversarial learning and distinctive adaptation performance has been reported. In this paper, a deep adversarial domain adaptation model based on a multi-layer joint kernelized distance metric is proposed. By utilizing the abstract features extracted from deep networks, the multi-layer joint kernelized distance (MJKD) between the $j$th target data predicted as the $m$th category and all the source data of the $m'$th category is computed. Base on MJKD, a class-balanced selection strategy is utilized in each category to select target data that are most likely to be classified correctly and treat them as labeled data using their pseudo labels. Then an adversarial architecture is used to draw the newly generated labeled training data and the remaining target data close to each other. In this way, the target data itself provide valuable information to enhance the domain adaptation. An analysis of the proposed method is also given and the experimental results demonstrate that the proposed method can achieve a better performance than a number of state-of-the-art methods.

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