College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201418, China.
College of Information Science and Technology, Donghua University, Shanghai 201620, China.
Sensors (Basel). 2020 Sep 8;20(18):5114. doi: 10.3390/s20185114.
Activity recognition has received considerable attention in many research fields, such as industrial and healthcare fields. However, many researches about activity recognition have focused on static activities and dynamic activities in current literature, while, the transitional activities, such as stand-to-sit and sit-to-stand, are more difficult to recognize than both of them. Consider that it may be important in real applications. Thus, a novel framework is proposed in this paper to recognize static activities, dynamic activities, and transitional activities by utilizing stacked denoising autoencoders (SDAE), which is able to extract features automatically as a deep learning model rather than utilize manual features extracted by conventional machine learning methods. Moreover, the resampling technique (random oversampling) is used to improve problem of unbalanced samples due to relatively short duration characteristic of transitional activity. The experiment protocol is designed to collect twelve daily activities (three types) by using wearable sensors from 10 adults in smart lab of Ulster University, the experiment results show the significant performance on transitional activity recognition and achieve the overall accuracy of 94.88% on three types of activities. The results obtained by comparing with other methods and performances on other three public datasets verify the feasibility and priority of our framework. This paper also explores the effect of multiple sensors (accelerometer and gyroscope) to determine the optimal combination for activity recognition.
活动识别在许多研究领域,如工业和医疗保健领域,受到了相当多的关注。然而,当前文献中的许多关于活动识别的研究都集中在静态活动和动态活动上,而过渡活动,如站立到坐下和坐下到站起,比两者都更难识别。考虑到这在实际应用中可能很重要。因此,本文提出了一种新的框架,通过利用堆叠去噪自动编码器(SDAE)来识别静态活动、动态活动和过渡活动,该框架能够自动提取特征,作为一种深度学习模型,而不是利用传统机器学习方法提取的手动特征。此外,由于过渡活动持续时间相对较短,采用重采样技术(随机过采样)来解决样本不平衡问题。实验协议旨在通过在阿尔斯特大学的智能实验室使用可穿戴传感器从 10 位成年人收集 12 种日常活动(三种类型),实验结果表明在过渡活动识别方面具有显著性能,在三种类型的活动中达到了 94.88%的整体准确率。与其他方法进行比较的结果以及在其他三个公共数据集上的性能验证了我们框架的可行性和优越性。本文还探讨了多个传感器(加速度计和陀螺仪)的效果,以确定活动识别的最佳组合。