可穿戴活动识别中的半监督多源域自适应

Avijoy Chakma, A. Faridee, R. Rao, Nirmalya Roy
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引用次数: 1

摘要

传统上,标记数据的稀缺性一直是构建可扩展的监督深度学习模型的主要障碍,这些模型可以在样本分布中存在各种异质性的情况下保持足够的性能。领域自适应试图通过将从较小的标记样本集学习到的特征适应到传入的未标记样本集来解决这个问题。传统的领域自适应方法通常只考虑标记样本的单一来源,但在实际用例中,标记样本可以来自多个来源,这为多源域自适应(MSDA)提供了动力。近年来,人们对基于可穿戴传感器的人体活动识别(HAR)进行了几种MSDA方法的研究,但与单源方法相比,它们的性能改进仍然很小。为了弥补这种性能差距,除了通常的边缘条件分布对齐之外,我们还探索了多种途径来对齐条件分布。在我们的研究中,我们在半监督设置下扩展了现有的多源域自适应方法。我们假设部分标记的目标领域数据可用,并进一步探索伪标记的使用,目标是实现与前者相似的性能。在三个公开可用的数据集上进行的实验中,我们发现在不同的领域自适应场景下,有限标记的目标领域数据和伪标签数据比无监督方法的性能分别提高了10-35%和2-6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-supervised Multi-source Domain Adaptation in Wearable Activity Recognition
The scarcity of labeled data has traditionally been the primary hindrance in building scalable supervised deep learning models that can retain adequate performance in the presence of various heterogeneities in sample distributions. Domain adaptation tries to address this issue by adapting features learned from a smaller set of labeled samples to that of the incoming unlabeled samples. The traditional domain adaptation approaches normally consider only a single source of labeled samples, but in real world use cases, labeled samples can originate from multiple-sources – providing motivation for multi-source domain adaptation (MSDA). Several MSDA approaches have been investigated for wearable sensor-based human activity recognition (HAR) in recent times, but their performance improvement compared to single source counterpart remained marginal. To remedy this performance gap that, we explore multiple avenues to align the conditional distributions in addition to the usual alignment of marginal ones. In our investigation, we extend an existing multi-source domain adaptation approach under semi-supervised settings. We assume the availability of partially labeled target domain data and further explore the pseudo labeling usage with a goal to achieve a performance similar to the former. In our experiments on three publicly available datasets, we find that a limited labeled target domain data and pseudo label data boost the performance over the unsupervised approach by 10-35% and 2-6%, respectively, in various domain adaptation scenarios.
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