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HL-HAR: Hierarchical Learning Based Human Activity Recognition in Wearable Computing

机译:HL-HAR:基于分层学习的可穿戴计算中的人类活动识别

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In recent years there have been many successes of recognizing the human activity using the data collected from the wearable sensors. Besides, many of these applications use the data from the smartphone. But it is also a challenge in practice for two reasons. Most method can achieve a high precision in the cost of increasing memory consumption, or asking for complicated data source. In this paper, (1) Utilizing Plus-L Minus-R selection to single out the optimal combination from the feature vector extracted; (2) Introducing a fast classification method named H-ELM to resolve the problem of the highly memory consumption in the process of calculation. The main benefit of this factor is to reduce memory usage and increase recognition accuracy with a brief feature vector so that a wearable device can identify activities all by itself. And the wearable device can recognize the sample activities even if keeping away from cellphone. Our results show that this method leads to that we can recognize object activities with the overall accuracy of 93.7% in a very short period of time on the dataset of Human Activity Recognition Using Smartphones Dataset. The selected 25-dimension feature vector nearly contains all the information and after many times of test, it can achieve very high percentage of accuracy. Moreover, the method enables the learning velocity to outperform the state-of-the-art on the Human Activity Recognition domain.
机译:近年来,使用从可穿戴传感器收集的数据识别人类活动的成功。此外,这些应用程序中的许多应用程序使用来自智能手机的数据。但是有两个原因在实践中也是一个挑战。大多数方法可以在增加内存消耗的成本中实现高精度,或者询问复杂的数据源。在本文中,(1)利用Plus-L minus-R选择从提取的特征向量中单出最佳组合; (2)引入一个名为H-ELM的快速分类方法,解决计算过程中高记忆消耗的问题。该因素的主要好处是减少内存使用,并通过简要的特征向量提高识别精度,使得可穿戴设备可以自行识别活动。并且即使远离手机,可穿戴设备也可以识别样品活动。我们的结果表明,这种方法导致我们可以在使用智能手机数据集的人类活动识别数据集的非常短的时间段内以93.7%的整体精度识别对象活动。所选的25维度特征载体几乎包含所有信息和经过多次测试后,它可以达到非常高的精度百分比。此外,该方法使得学习速度能够在人类活动识别域上优于现有技术。

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