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Two phase ensemble classifier for smartphone based human activity recognition independent of hardware configuration and usage behaviour

机译:基于智能手机的人类活动识别的两个相合格分类器独立于硬件配置和使用行为

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摘要

Human activity recognition is an important technology in pervasive computing as it provides valuable information for smart healthcare and assisted living applications. Use of smartphones for activity recognition poses new challenges due to variation in hardware configuration and usage behaviour like how the smartphone is kept. Only a few recent works address one or more of these challenges. Consequently, in this paper we present a two phase activity recognition framework for identifying both static and dynamic activities addressing above mentioned challenges using smart handhelds. The framework through feature selection and ensemble classifier, address the variance due to different hardware configuration and usage behaviour. The two-phase framework is implemented and tested on real dataset collected from ten users with six different device configurations. Data is collected from accelerometer only as this sensor is available in any kind of smart handheld devices. In the first phase, the best training set is identified that is fed to the ensemble as input. In the next phase, the classifier based ensemble gives the final output through majority voting. It is observed that, with our proposed two phase classification, the accuracy level of 98% can be achieved for activity recognition while maintaining energy efficiency as only time domain features are considered.
机译:人类活动识别是普遍计算中的重要技术,因为它为智能医疗保健和辅助生活应用提供了有价值的信息。使用智能手机进行活动识别由于硬件配置和使用行为的变化以及保留了智能手机的使用行为,因此使用了新的挑战。最近只有几个作品解决了一个或多个这些挑战。因此,在本文中,我们展示了两种相位活动识别框架,用于识别使用智能手持设备解决上述挑战的静态和动态活动。通过特征选择和集合分类器的框架,由于不同的硬件配置和使用行为而引起方差。在具有六个不同设备配置的10个用户收集的实际数据集上实现和测试了两阶段框架。只有在任何类型的智能手持设备中都有此传感器,因此从加速度计收集数据。在第一阶段中,识别最佳训练集,其被馈送到集合作为输入。在下阶段,基于分类的组合通过多数投票给出了最终输出。观察到,通过我们提出的两相分类,可以实现98%的精度水平,以便在保持能效仅考虑时域特征时保持能量识别。

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