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Optimal Feature Set for Smartphone-based Activity Recognition

机译:基于智能手机的活动识别的最佳功能

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Human activity recognition using wearable and mobile devices is used for decades to monitor humans’ daily behaviours. In recent years as smartphones being widely integrated into our daily lives, the use of smartphone’s built-in sensors in human activity recognition has been receiving more attention, in which smartphone accelerometer plays the main role. However, in comparison to the standard machine, when developing human activity recognition using a smartphone, the limitations such as processing capability and energy consumption should be taken into consideration, and therefore, a trade-off between performance and computational complexity should be considered. In this paper, we shed light on the importance of feature selection and its impact on simplifying the activity classification process, which enhances the computational complexity of the system. The novelty of this work is related to identifying the most efficient features for the detection of each individual activity uniquely. In an experimental study with human users and using different smartphones, we investigated how to achieve an optimal feature set, using which the system complexity can be decreased while the activity recognition accuracy remains high. For that, in the considered scenario, we instructed the participants to perform different activities, including static, dynamic, going up and down the stairs, and walking fast and slow while freely holding a smartphone in their hands. To evaluate the obtained optimal feature set implementing two major classification algorithms, the decision tree and the Bayesian network, we investigated activity recognition accuracy for different activities. We further evaluated the optimal feature set by comparing the performance of the activity recognition system using the optimal feature set and three feature sets taken from the state-of-the-art. The experimental results demonstrated that replacing a large number of conventional features with an optimal feature set has only a negligible impact on the overall activity recognition system performance while it can significantly decrease the system’s complexity, which is essential for smartphone-based systems.
机译:使用可穿戴式和移动设备的人类活动识别使用了几十年来监视人类的日常行为。近年来智能手机被广泛融入我们的日常生活中,使用智能手机的内置在人类活动识别传感器已得到更多的关注,其中智能手机的加速计起着主要作用。然而,相较于标准的机器,使用智能手机发展的人类活动识别时,如处理能力和能耗的限制,应考虑到,因此,性能和计算复杂性之间的权衡应予以考虑。在本文中,我们揭示特征选择的重要性及其对简化活动分类过程,提高了系统的计算复杂度的影响光。这项工作的新颖之处在于与识别用于检测每个单独的活动的唯一的最有效的特点。在实验研究与人类用户,并使用不同的智能手机,我们研究如何而活动识别准确率仍然很高,以达到最佳的功能集,使用该系统的复杂性可以降低。为此,在所考虑的情况下,我们指示参与者执行不同的活动,包括静态,动态,持续上下楼梯,和步行快慢而自由地拿着自己手中的智能手机。为了评估所获得的最佳特征集实现两个主要的分类算法,决策树和贝叶斯网络,我们研究了不同的活动,活动的识别精度。通过比较使用取自最佳特征集和三个功能集活动识别系统的性能,我们进一步评估最佳特征集国家的最先进的。实验结果表明,与最佳特征集代替了大量的常规功能,只有对整个活动的识别系统性能影响甚微,而它可以显著降低系统的复杂性,这是基于智能手机的系统是必不可少的。

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