Multi-source Transfer Learning for Human Activity Recognition in Smart Homes

Hao Niu, D. Nguyen, Kei Yonekawa, Mori Kurokawa, Shinya Wada, K. Yoshihara
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引用次数: 4

Abstract

With the deployment of smart homes, we find that human activity recognition (HAR) is essentially important to many applications, e.g., child/senior care, intelligent information push and exercise promotion. Although it is always better to build HAR model for each smart home to resolve the practical problem that homes have different floorplans or adopted sensors, it is intractable to acquire labeled data for each home due to cost and privacy. We thus propose a method to transfer the HAR model from multiple labeled source homes to the unlabeled target home. Specifically, we first generate transferable representations for the sensors of these homes, based on which we build the HAR model using the data of labeled source homes. Then, we employ the built HAR model into the unlabeled target home. Experiment results on CASAS dataset illustrate that our proposed method outperforms baseline methods in general and also avoids potential negative transfer caused by using only one source home.
智能家居中人类活动识别的多源迁移学习
随着智能家居的部署,我们发现人类活动识别(HAR)对许多应用至关重要,例如儿童/老年人护理,智能信息推送和运动推广。虽然为每个智能家庭建立HAR模型总是更好地解决家庭有不同的平面图或采用传感器的实际问题,但由于成本和隐私问题,难以为每个家庭获取标记数据。因此,我们提出了一种将HAR模型从多个标记的源房屋转移到未标记的目标房屋的方法。具体来说,我们首先为这些家庭的传感器生成可转移的表示,在此基础上,我们使用标记源家庭的数据构建HAR模型。然后,我们将构建的HAR模型应用到未标记的目标家庭中。在CASAS数据集上的实验结果表明,我们提出的方法总体上优于基线方法,并且避免了仅使用一个源家园造成的潜在负迁移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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