论文标题
生理生物信号的分离的对抗转移学习
Disentangled Adversarial Transfer Learning for Physiological Biosignals
论文作者
论文摘要
可穿戴传感器的最新发展表明,以有效且舒适的方式监测生理状况的有希望的结果。生理状态评估的一个主要挑战是,由用户跨用户或来自同一用户的不同记录会话的域不一致引起的转移学习问题。我们提出了一种转移学习的对抗性推理方法,以在应力状态水平评估中从生理生物信号数据中提取分散的滋扰式刺激性表示。我们通过使用对手网络和滋扰网络来利用与任务相关的功能和人歧视信息之间的权衡,以共同操纵和解散编码器的潜在潜在表示,然后将其输入到歧视性分类器中。跨受试者转移评估的结果证明了所提出的对抗框架的好处,因此显示了其适应更广泛范围的受试者的能力。最后,我们强调,我们提出的对抗性转移学习方法也适用于其他深度功能学习框架。
Recent developments in wearable sensors demonstrate promising results for monitoring physiological status in effective and comfortable ways. One major challenge of physiological status assessment is the problem of transfer learning caused by the domain inconsistency of biosignals across users or different recording sessions from the same user. We propose an adversarial inference approach for transfer learning to extract disentangled nuisance-robust representations from physiological biosignal data in stress status level assessment. We exploit the trade-off between task-related features and person-discriminative information by using both an adversary network and a nuisance network to jointly manipulate and disentangle the learned latent representations by the encoder, which are then input to a discriminative classifier. Results on cross-subjects transfer evaluations demonstrate the benefits of the proposed adversarial framework, and thus show its capabilities to adapt to a broader range of subjects. Finally we highlight that our proposed adversarial transfer learning approach is also applicable to other deep feature learning frameworks.