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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >TSE-CNN: A Two-Stage End-to-End CNN for Human Activity Recognition
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TSE-CNN: A Two-Stage End-to-End CNN for Human Activity Recognition

机译:TSE-CNN:用于人类活动识别的两级端到端CNN

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摘要

Human activity recognition has been widely used in healthcare applications such as elderly monitoring, exercise supervision, and rehabilitation monitoring. Compared with other approaches, sensor-based wearable human activity recognition is less affected by environmental noise and therefore is promising in providing higher recognition accuracy. However, one of the major issues of existing wearable human activity recognition methods is that although the average recognition accuracy is acceptable, the recognition accuracy for some activities (e.g., ascending stairs and descending stairs) is low, mainly due to relatively less training data and complex behavior pattern for these activities. Another issue is that the recognition accuracy is low when the training data from the test subject are limited, which is a common case in real practice. In addition, the use of neural network leads to large computational complexity and thus high power consumption. To address these issues, we proposed a new human activity recognition method with two-stage end-to-end convolutional neural network and a data augmentation method. Compared with the state-of-the-art methods (including neural network based methods and other methods), the proposed methods achieve significantly improved recognition accuracy and reduced computational complexity.
机译:人类活动识别已广泛用于老年监测,行使监督和康复监测等医疗保健应用。与其他方法相比,基于传感器的可穿戴人类活动识别受环境噪声的影响较小,因此在提供更高的识别准确性方面具有很大的承诺。然而,现有可穿戴人类活动识别方法的主要问题之一是,尽管平均识别准确性是可接受的,但一些活动(例如,上升楼梯和下降楼梯)的识别准确性低,主要是由于相对较少的训练数据和这些活动的复杂行为模式。另一个问题是,当测试对象的训练数据有限时,识别准确度低,这是实际实践中的常见情况。此外,使用神经网络导致大的计算复杂性大,从而导致高功耗。为解决这些问题,我们提出了一种新的人类活动识别方法,具有两级端到端卷积神经网络和数据增强方法。与最先进的方法(包括神经网络的方法和其他方法)相比,所提出的方法实现了显着提高的识别精度和降低的计算复杂性。

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