School of Electronics and Information, Northwestern Polytechnical University, Xi'an 710072, China.
School of Electronic Engineering, Xidian University, Xi'an 710071, China.
Sensors (Basel). 2020 Oct 16;20(20):5868. doi: 10.3390/s20205868.
Distribution mismatch caused by various resolutions, backgrounds, etc. can be easily found in multi-sensor systems. Domain adaptation attempts to reduce such domain discrepancy by means of different measurements, e.g., maximum mean discrepancy (MMD). Despite their success, such methods often fail to guarantee the separability of learned representation. To tackle this issue, we put forward a novel approach to jointly learn both domain-shared and discriminative representations. Specifically, we model the feature discrimination explicitly for two domains. Alternating discriminant optimization is proposed to obtain discriminative features with an l2 constraint in labeled source domain and sparse filtering is introduced to capture the intrinsic structures exists in the unlabeled target domain. Finally, they are integrated in a unified framework along with MMD to align domains. Extensive experiments compared with state-of-the-art methods verify the effectiveness of our method on cross-domain tasks.
多传感器系统中很容易出现由于分辨率、背景等各种原因导致的分布不匹配问题。域自适应通过不同的测量方法(例如最大均值差异 (MMD))来试图减少这种域差异。尽管这些方法取得了成功,但它们往往不能保证学习表示的可分离性。为了解决这个问题,我们提出了一种新的方法来共同学习领域共享和判别表示。具体来说,我们为两个领域显式地建模特征判别。通过在有标签的源域中使用 l2 约束来提出交替判别优化,从而获得判别特征,并且引入稀疏滤波来捕获无标签目标域中存在的内在结构。最后,它们与 MMD 一起集成到一个统一的框架中,以对齐域。与最先进的方法进行的广泛实验验证了我们的方法在跨域任务中的有效性。