论文标题
SWL-Adapt:一种无监督的域适应模型,具有跨用户可穿戴人类活动识别的样本重量学习
SWL-Adapt: An Unsupervised Domain Adaptation Model with Sample Weight Learning for Cross-User Wearable Human Activity Recognition
论文作者
论文摘要
实际上,由于用户差异,可穿戴的人类活动识别(WHAR)模型通常面临新用户的性能降解。在注释稀缺下,无监督的域适应性(UDA)成为交叉用户码头的自然解决方案。现有的UDA模型通常将样本对齐跨域而没有分化,这忽略了样本之间的差异。在本文中,我们提出了一个无监督的域适应模型,该模型具有跨用户码头的样本重量学习(SWL-ADAPT)。 SWL-ADAPT根据分类损失和通过参数化网络的分类损失和域歧视损失来计算样品权重。我们介绍了基于元优化的更新规则,以了解该网络端到端,该网络以所选伪标记的目标样本的元分类损失为指导。因此,该网络可以根据手头的交叉用户ward任务符合加权功能,该任务优于现有的样本分化规则,为特殊场景定义。在三个公共码头数据集上进行的大量实验表明,SWL-Adapt在交叉用户war骨头任务上的最新性能,分别超过了最佳基线的准确性和5.3%的准确性和5.3%。
In practice, Wearable Human Activity Recognition (WHAR) models usually face performance degradation on the new user due to user variance. Unsupervised domain adaptation (UDA) becomes the natural solution to cross-user WHAR under annotation scarcity. Existing UDA models usually align samples across domains without differentiation, which ignores the difference among samples. In this paper, we propose an unsupervised domain adaptation model with sample weight learning (SWL-Adapt) for cross-user WHAR. SWL-Adapt calculates sample weights according to the classification loss and domain discrimination loss of each sample with a parameterized network. We introduce the meta-optimization based update rule to learn this network end-to-end, which is guided by meta-classification loss on the selected pseudo-labeled target samples. Therefore, this network can fit a weighting function according to the cross-user WHAR task at hand, which is superior to existing sample differentiation rules fixed for special scenarios. Extensive experiments on three public WHAR datasets demonstrate that SWL-Adapt achieves the state-of-the-art performance on the cross-user WHAR task, outperforming the best baseline by an average of 3.1% and 5.3% in accuracy and macro F1 score, respectively.