A time-efficient convolutional neural network model in human activity recognition

被引:0
作者
Marjan Gholamrezaii
SMT AlModarresi
机构
[1] Yazd University,Department of Electrical Engineering
来源
Multimedia Tools and Applications | 2021年 / 80卷
关键词
Human activity recognition; Convolutional neural network; Pooling layers; Smartphone sensors; Deep learning; Fast fourier transform;
D O I
暂无
中图分类号
学科分类号
摘要
Activity recognition represents the task of classifying data derived from different sensor types into one of predefined activity classes. The most popular and beneficial sensors in the area of action recognition are inertial sensors such as accelerometer and gyroscope. Convolutional neural network (CNN) as one of the best deep learning methods has recently attracted much attention to the problem of activity recognition, where 1D kernels capture local dependency over time in a series of observations measured at inertial sensors (3-axis accelerometers and gyroscopes) while in 2D kernels apart from time dependency, dependency between signals from different axes of same sensor and also over different sensors will be considered. Most convolutional neural networks used for recognition task are built using convolution and pooling layers followed by a few number of fully connected layers but large and deep neural networks have high computational costs. In this paper, we propose a new architecture that consists solely of convolutional layers and find that with removing the pooling layers and instead adding strides to convolution layers, the computational time will decrease notably while the model performance will not change or in some cases will even improve. Also both 1D and 2D convolutional neural networks with and without pooling layer will be investigated and their performance will be compared with each other and also with some other hand-crafted feature based methods. The third point that will be discussed in this paper is the impact of applying fast fourier transform (FFT) to inputs before training learning algorithm. It will be shown that this preprocessing will enhance the model performance. Experiments on benchmark datasets demonstrate the high performance of proposed 2D CNN model with no pooling layers.
引用
收藏
页码:19361 / 19376
页数:15
相关论文
共 30 条
[1]  
Banos O(2015)Design: implementation and validation of a novel open framework for agile development of mobile health applications BioMedical Engineering OnLine 14 1-20
[2]  
Villalonga C(2017)Real-time human activity recognition from accelerometer data using convolutional Neural Netw Appl Soft Comput J 62 915-922
[3]  
Garcia R(2013)Recognizing physical activities using Wii remote Int J Inf Educ Technol 3 60-62
[4]  
Saez A(2010)Activity recognition using cell phone accelerometers SIGKDD Explorations 12 74-82
[5]  
Damas M(2020)Imaging and fusing time series for wearable sensor-based human activity recognition Information Fusion Journal Elsevier 53 80-87
[6]  
Holgado JA(2016)A deep learning approach to on-node sensor data analytics for mobile or wearable devices IEEE J Biomed Health Inform 21 56-64
[7]  
Lee S(2016)Human activity recognition with smartphone sensors using deep learning neural networks Expert Syst Appl 235–244 59-56764
[8]  
Pomares H(2018)DFTerNet: towards 2-bit dynamic fusion networks for accurate human activity recognition IEEE Access 6 56750-undefined
[9]  
Rojas I(undefined)undefined undefined undefined undefined-undefined
[10]  
Ignatov A(undefined)undefined undefined undefined undefined-undefined