Improved Deep Learning Structure with Lightweight Depthwise Convolutions for Human Activity Recognition

被引:0
|
作者
Jang, Seoungwoo [1 ]
Jung, Im Y. [2 ]
机构
[1] Kyungpook Natl Univ, Sch Elect Engn, Daegu, South Korea
[2] Kyungpook Natl Univ, Sch Elect & Elect Engn, Daegu, South Korea
基金
新加坡国家研究基金会;
关键词
Deep Learning; Depthwise Convolution; Depthwise Mix Kernel Convolution; Human Activity Recognition; Lightweight Model for IoT Devices; FRAMEWORK;
D O I
10.22967/HCIS.2025.15.020
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Human activity recognition (HAR) entails analyzing and interpreting data to infer human activity accurately. Convolution neural network deep learning techniques detect and classify human activity. However, convolutional layers in deep learning models typically have many parameters and floating-point operations per second, posing a challenge for real-time inference on Internet of Things (IoT) devices suitable for HAR due to their continuous data collection. This study addresses this problem by introducing a lightweight, depthwise residual network squeeze-and-excitation (ResNet-SE) model for HAR. The proposed model independently considers the spatial and channel data characteristics by employing depthwise convolutions, enabling efficient calculations. Extensive performance evaluation experiments were conducted on three public datasets for HAR (i.e., WISDM, UCIHAR, and PAMAP2). The best results surpassed those of state-of-the-art models in HAR, revealing accuracy values of 0.945 with 61,298 parameters and a 3.54-second inference time on the WISDM dataset, 0.997 with 60,134 parameters and a 0.47-second inference time on the UCI-HAR dataset, and 0.974 with 61,004 parameters and a 0.347-second inference time on the PAMAP2 dataset. The proposed model trained on the PAMAP2 dataset was deployed in an IoT device environment, and tests were conducted using experimental data. The results demonstrate that the proposed model exhibits fast inference times and lower energy consumption, and CPU use even in IoT devices. It achieves higher accuracy with actual data, highlighting its suitability for IoT environments. The results demonstrate that the proposed lightweight and highly practical model displays superior activity detection capabilities compared to existing models.
引用
收藏
页数:21
相关论文
共 50 条
  • [41] Complex-Valued Convolutions for Modulation Recognition using Deep Learning
    Krzyston, Jakob
    Bhattacharjea, Rajib
    Stark, Andrew
    2020 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS WORKSHOPS (ICC WORKSHOPS), 2020,
  • [42] ConViViT - A Deep Neural Network Combining Convolutions and Factorized Self-Attention for Human Activity Recognition
    Dokkar, Rachid Reda
    Chaieb, Faten
    Drira, Hassen
    Aberkane, Arezki
    2023 IEEE 25TH INTERNATIONAL WORKSHOP ON MULTIMEDIA SIGNAL PROCESSING, MMSP, 2023,
  • [43] Lightweight container number recognition based on deep learning
    Liu, Tao
    Wu, Xianqing
    Li, Fang
    INTERNATIONAL JOURNAL OF SYSTEM ASSURANCE ENGINEERING AND MANAGEMENT, 2025, : 1058 - 1071
  • [44] Lightweight Deep Learning Framework for Speech Emotion Recognition
    Akinpelu, Samson
    Viriri, Serestina
    Adegun, Adekanmi
    IEEE ACCESS, 2023, 11 : 77086 - 77098
  • [45] A lightweight deep learning model for cattle face recognition
    Li, Zheng
    Lei, Xuemei
    Liu, Shuang
    Computers and Electronics in Agriculture, 2022, 195
  • [46] Review of Human Action Recognition Based on Improved Deep Learning Methods
    Zhu Xianghua
    Zhi Min
    THIRTEENTH INTERNATIONAL CONFERENCE ON GRAPHICS AND IMAGE PROCESSING (ICGIP 2021), 2022, 12083
  • [47] An Efficient Human Activity Recognition Technique Based on Deep Learning
    Khelalef, A.
    Ababsa, F.
    Benoudjit, N.
    PATTERN RECOGNITION AND IMAGE ANALYSIS, 2019, 29 (04) : 702 - 715
  • [48] A Survey of Deep Learning Based Models for Human Activity Recognition
    Nida Saddaf Khan
    Muhammad Sayeed Ghani
    Wireless Personal Communications, 2021, 120 : 1593 - 1635
  • [49] An Efficient Human Activity Recognition Technique Based on Deep Learning
    A. Khelalef
    F. Ababsa
    N. Benoudjit
    Pattern Recognition and Image Analysis, 2019, 29 : 702 - 715
  • [50] Combining Symbolic Reasoning and Deep Learning for Human Activity Recognition
    Rueda, Fernando Moya
    Luedtke, Stefan
    Schroeder, Max
    Yordanova, Kristina
    Kirste, Thomas
    Fink, Gernot A.
    2019 IEEE INTERNATIONAL CONFERENCE ON PERVASIVE COMPUTING AND COMMUNICATIONS WORKSHOPS (PERCOM WORKSHOPS), 2019, : 22 - 27