基于神经网络表征分析的人类活动识别迁移学习

Sizhe An, Ganapati Bhat, S. Gumussoy, Ümit Y. Ogras
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引用次数: 19

摘要

近年来,人类活动识别(HAR)由于其在移动健康监测、活动识别和患者康复方面的应用而有所增加。典型的方法是与已知用户离线训练HAR分类器,然后对新用户使用相同的分类器。然而,如果新用户的活动模式与训练数据中的活动模式不同,那么使用这种方法的准确性可能会很低。同时,由于高昂的计算成本和训练时间,为新用户从头开始训练对于移动应用程序来说是不可行的。为了解决这个问题,我们提出了一个由两个部分组成的HAR迁移学习框架。首先,代表性分析揭示了可以在用户之间传递的常见特征和需要定制的用户特定特征。利用这一见解,我们将离线分类器的可重用部分转移给新用户,并仅对其余部分进行微调。我们对五个数据集的实验表明,与不使用迁移学习的基线相比,准确率提高了43%,训练时间减少了66%。此外,在硬件平台上的测量表明,功耗和能耗分别降低了43%和68%,同时实现了与从头开始训练相同或更高的精度。我们的代码是为了再现性而发布的。1
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning for Human Activity Recognition Using Representational Analysis of Neural Networks
Human activity recognition (HAR) has increased in recent years due to its applications in mobile health monitoring, activity recognition, and patient rehabilitation. The typical approach is training a HAR classifier offline with known users and then using the same classifier for new users. However, the accuracy for new users can be low with this approach if their activity patterns are different than those in the training data. At the same time, training from scratch for new users is not feasible for mobile applications due to the high computational cost and training time. To address this issue, we propose a HAR transfer learning framework with two components. First, a representational analysis reveals common features that can transfer across users and user-specific features that need to be customized. Using this insight, we transfer the reusable portion of the offline classifier to new users and fine-tune only the rest. Our experiments with five datasets show up to 43% accuracy improvement and 66% training time reduction when compared to the baseline without using transfer learning. Furthermore, measurements on the hardware platform reveal that the power and energy consumption decreased by 43% and 68%, respectively, while achieving the same or higher accuracy as training from scratch. Our code is released for reproducibility.1
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CiteScore
10.30
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