TransAct:迁移学习支持活动识别

Md Abdullah Al Hafiz Khan, Nirmalya Roy
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引用次数: 32

摘要

智能手机的活动识别在医疗保健、肥胖管理、异常行为检测、公共安全等领域具有巨大的应用潜力。典型的活动检测系统是建立在识别训练和测试环境中存在的有限活动集的基础上的。然而,这些系统在训练和测试阶段都需要类似的数据分布、活动集和足够的标记训练数据。因此,在训练和测试环境不稳定、数据分布分散、测试环境具有有限训练样本的新活动集的实际场景中,推断新的活动是具有挑战性的。标记训练数据样本的缺乏也降低了活动识别的性能。在这项工作中,我们通过使用k-means聚类增强基于实例的Transfer Boost算法来解决这些挑战。我们用三个公共数据集(HAR、MHealth和DailyAndSports)评估了我们的TransAct模型,并证明我们的TransAct模型优于传统的活动识别方法。实验结果表明,TransAct模型平均达到了约81%的活动检测准确率。
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TransAct: Transfer learning enabled activity recognition
Activity recognition using smartphone has great potential in many applications like healthcare, obesity management, abnormal behavior detection, public safety and security etc. Typical activity detection systems are built on to recognize a limited set of activities that are present in the training and testing environments. However, these systems require similar data distributions, activity sets and sufficient labeled training data in both training and testing phases. Therefore, inferring new activities is challenging in practical scenarios where training and testing environments are volatile, data distributions are diverge and testing environment has new set of activities with limited training samples. The shortage of labeled training data samples also degrades the activity recognition performance. In this work, we address these challenges by augmenting the Instance based Transfer Boost algorithm with k-means clustering. We evaluated our TransAct model with three public datasets - HAR, MHealth and DailyAndSports and demonstrated that our TransAct model outperforms traditional activity recognition approaches. Our experimental results show that our TransAct model achieves ≈ 81% activity detection accuracy on average.
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