IEEE Trans Cybern. 2018 Jan;48(1):288-299. doi: 10.1109/TCYB.2016.2633306. Epub 2017 Jan 12.
Domain adaptation algorithms are useful when the distributions of the training and the test data are different. In this paper, we focus on the problem of instrumental variation and time-varying drift in the field of sensors and measurement, which can be viewed as discrete and continuous distributional change in the feature space. We propose maximum independence domain adaptation (MIDA) and semi-supervised MIDA to address this problem. Domain features are first defined to describe the background information of a sample, such as the device label and acquisition time. Then, MIDA learns a subspace which has maximum independence with the domain features, so as to reduce the interdomain discrepancy in distributions. A feature augmentation strategy is also designed to project samples according to their backgrounds so as to improve the adaptation. The proposed algorithms are flexible and fast. Their effectiveness is verified by experiments on synthetic datasets and four real-world ones on sensors, measurement, and computer vision. They can greatly enhance the practicability of sensor systems, as well as extend the application scope of existing domain adaptation algorithms by uniformly handling different kinds of distributional change.
当训练数据和测试数据的分布不同时,域自适应算法很有用。在本文中,我们专注于传感器和测量领域中的工具变化和时变漂移问题,这些问题可以看作是特征空间中的离散和连续分布变化。我们提出了最大独立域自适应(MIDA)和半监督 MIDA 来解决这个问题。首先定义域特征来描述样本的背景信息,例如设备标签和采集时间。然后,MIDA 学习一个与域特征具有最大独立性的子空间,以减少分布中的域间差异。还设计了一种特征增强策略,根据样本的背景将其投影,以提高适应性。所提出的算法灵活且快速。在合成数据集和四个关于传感器、测量和计算机视觉的真实数据集上的实验验证了它们的有效性。它们可以大大提高传感器系统的实用性,并通过统一处理不同类型的分布变化来扩展现有域自适应算法的应用范围。