IMU-Based Fitness Activity Recognition Using CNNs for Time Series Classification

被引:10
作者
Mueller, Philipp Niklas [1 ]
Mueller, Alexander Josef [1 ]
Achenbach, Philipp [1 ]
Goebel, Stefan [1 ]
机构
[1] Tech Univ Darmstadt, Serious Games Grp, D-64289 Darmstadt, Germany
关键词
activity recognition; inertial measurement unit; deep learning; convolutional neural network; residual neural network; traditional machine learning; study;
D O I
10.3390/s24030742
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Mobile fitness applications provide the opportunity to show users real-time feedback on their current fitness activity. For such applications, it is essential to accurately track the user's current fitness activity using available mobile sensors, such as inertial measurement units (IMUs). Convolutional neural networks (CNNs) have been shown to produce strong results in different time series classification tasks, including the recognition of daily living activities. However, fitness activities can present unique challenges to the human activity recognition task (HAR), including greater similarity between individual activities and fewer available data for model training. In this paper, we evaluate the applicability of CNNs to the fitness activity recognition task (FAR) using IMU data and determine the impact of input data size and sensor count on performance. For this purpose, we adapted three existing CNN architectures to the FAR task and designed a fourth CNN variant, which we call the scaling fully convolutional network (Scaling-FCN). We designed a preprocessing pipeline and recorded a running exercise data set with 20 participants, in which we evaluated the respective recognition performances of the four networks, comparing them with three traditional machine learning (ML) methods commonly used in HAR. Although CNN architectures achieve at least 94% test accuracy in all scenarios, two traditional ML architectures surpass them in the default scenario, with support vector machines (SVMs) achieving 99.00 +/- 0.34% test accuracy. The removal of all sensors except one foot sensor reduced the performance of traditional ML architectures but improved the performance of CNN architectures on our data set, with our Scaling-FCN reaching the highest accuracy of 99.86 +/- 0.11% on the test set. Our results suggest that CNNs are generally well suited for fitness activity recognition, and noticeable performance improvements can be achieved if sensors are dropped selectively, although traditional ML architectures can still compete with or even surpass CNNs when favorable input data are utilized.
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页数:20
相关论文
共 45 条
[1]   Wearable Motion Sensor Based Analysis of Swing Sports [J].
Anand, Akash ;
Sharma, Manish ;
Srivastava, Rupika ;
Kaligounder, Lakshmi ;
Prakash, Divya .
2017 16TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA), 2017, :261-267
[2]   A Multipurpose Wearable Sensor-Based System for Weight Training [J].
Balkhi, Parinaz ;
Moallem, Mehrdad .
AUTOMATION, 2022, 3 (01) :132-152
[3]   TSFEL: Time Series Feature Extraction Library [J].
Barandas, Marilia ;
Folgado, Duarte ;
Fernandes, Leticia ;
Santos, Sara ;
Abreu, Mariana ;
Bota, Patricia ;
Liu, Hui ;
Schultz, Tanja ;
Gamboa, Hugo .
SOFTWAREX, 2020, 11
[4]  
Barshan B, 2013, UCI Machine Learning Repository
[5]   Learning to Judge Like a Human: Convolutional Networks for Classification of Ski Jumping Errors [J].
Brock, Heike ;
Ohgi, Yuji ;
Lee, James .
PROCEEDINGS OF THE 2017 ACM INTERNATIONAL SYMPOSIUM ON WEARABLE COMPUTERS (ISWC 17), 2017, :106-113
[6]  
Clements J., BasicMotions Dataset
[7]   A Survey on Activity Detection and Classification Using Wearable Sensors [J].
Cornacchia, Maria ;
Ozcan, Koray ;
Zheng, Yu ;
Velipasalar, Senem .
IEEE SENSORS JOURNAL, 2017, 17 (02) :386-403
[8]  
Cui ZC, 2016, Arxiv, DOI arXiv:1603.06995
[9]   Deep Learning on Mobile Devices - A Review [J].
Deng, Yunbin .
MOBILE MULTIMEDIA/IMAGE PROCESSING, SECURITY, AND APPLICATIONS 2019, 2019, 10993
[10]  
Dornfeld P., 2019, Bachelors Thesis, P53