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A Feature-Based Knowledge Transfer Framework for Cross-Environment Activity Recognition Toward Smart Home Applications

机译:基于功能的知识转移框架,用于智能家居应用的跨环境活动识别

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摘要

Building contextual models for new “smart” environments is not considered cost effective if data for model training must be collected from scratch. It is more practical to transfer as much learned knowledge as possible from an existing environment to the new target environment in order to reduce the data collection effort. In order to reuse learned knowledge from an original environment, this study proposed a feature-based knowledge transfer framework. The framework makes use of transfer learning, which relaxes the constraint requiring model training and testing datasets to be highly similar in distribution. Experimental results show that this framework can successfully help extract and transfer knowledge between two different smart-home environments. Models trained via the proposed framework can even outperform nontransfer-learning models by up to 8% in accuracy. Finally, the flexibility of the proposed framework enables used as a test bed for evaluating different methods and models in order to improve the service quality of human-centric context-aware applications.
机译:如果必须从头开始收集用于模型训练的数据,则不能为新的“智能”环境构建上下文模型具有成本效益。为了减少数据收集工作,将尽可能多的学习知识从现有环境转移到新目标环境更为实用。为了重用原始环境中的学习知识,本研究提出了一种基于功能的知识转移框架。该框架利用了转移学习,从而放宽了要求模型训练和测试数据集在分布上高度相似的约束。实验结果表明,该框架可以成功地帮助在两个不同的智能家居环境之间提取和传输知识。通过提出的框架训练的模型甚至可以比非转移学习模型的准确性高8%。最后,所提出的框架的灵活性可以用作评估不同方法和模型的测试平台,从而提高以人为中心的上下文感知应用程序的服务质量。

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