Deploying Machine Learning in Resource-Constrained Devices for Human Activity Recognition

被引:0
|
作者
Reusch, Rafael Schild [1 ]
Juracy, Leonardo Rezende [1 ]
Moraes, Fernando Gehm [1 ]
机构
[1] Pontificia Univ Catolica Rio Grande do Sul, Sch Technol, Porto Alegre, RS, Brazil
关键词
Machine Learning; 1D CNN; Human Activity Recognition; Embedded Systems; Constrained Devices; COST;
D O I
10.1109/SBESC60926.2023.10324073
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Machine Learning (ML) has proven to be highly effective in solving complex tasks such as human activity and speech recognition. However, the introduction of accuracy-driven ML models has brought new challenges in terms of their applicability in resource-constrained systems. In Human Activity Recognition (HAR), current state-of-the-art approaches often rely on complex multilayer LSTM (Long Short Term Memory) networks once they are well suited to handle temporal series data, a crucial aspect of HAR, but presenting a high computational cost associated with running the inference phase. In HAR, low-power IoT devices, such as wearable sensor arrays, are frequently used as data-gathering devices. However, we observed a limited effort to deploy ML technology directly on these devices, most commonly using edge or cloud computing services, which can be unavailable in some situations. This work aims to provide a Convolutional Neural Network (CNN) tuned for resource-constrained embedded systems. After tuning the CNN model in the Pytorch framework, we present an equivalent C model and employ optimization techniques. The results show that, compared to the reference CNN, the optimized model reduced the CNN model 2.34 times, does not require floating-point units (FPUs), and improved accuracy from 74.9% to 85.2%. These results show the feasibility of running the proposed CNN on resource-constrained devices.
引用
下载
收藏
页数:6
相关论文
共 50 条
  • [21] Automatic Distributed Deep Learning Using Resource-Constrained Edge Devices
    Gutierrez-Torre, Alberto
    Bahadori, Kiyana
    Baig, Shuja-ur-Rehman
    Iqbal, Waheed
    Vardanega, Tullio
    Berral, Josep Lluis
    Carrera, David
    IEEE INTERNET OF THINGS JOURNAL, 2022, 9 (16) : 15018 - 15029
  • [22] Communication-Efficient Federated Learning for Resource-Constrained Edge Devices
    Lan, Guangchen
    Liu, Xiao-Yang
    Zhang, Yijing
    Wang, Xiaodong
    IEEE Transactions on Machine Learning in Communications and Networking, 2023, 1 : 210 - 224
  • [23] FedCare: Federated Learning for Resource-Constrained Healthcare Devices in IoMT System
    Gupta, Anshita
    Misra, Sudip
    Pathak, Nidhi
    Das, Debanjan
    IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS, 2023, 10 (04) : 1587 - 1596
  • [24] BePOCH: Improving Federated Learning Performance in Resource-Constrained Computing Devices
    Ibraimi, Lenart
    Selimi, Mennan
    Freitag, Felix
    2021 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM), 2021,
  • [25] PCANN: Distributed ANN Architecture for Image Recognition in Resource-Constrained IoT Devices
    Bi, Tianyu
    Liu, Qingzhi
    Ozcelebi, Tanir
    Jarnikov, Dmitri
    Sekulovski, Dragan
    2019 15TH INTERNATIONAL CONFERENCE ON INTELLIGENT ENVIRONMENTS (IE 2019), 2019, : 1 - 8
  • [26] Exploring Automatic Gym Workouts Recognition Locally On Wearable Resource-Constrained Devices
    Bian, Sizhen
    Wang, Xiaying
    Polonelli, Tommaso
    Magno, Michele
    2022 IEEE 13TH INTERNATIONAL GREEN AND SUSTAINABLE COMPUTING CONFERENCE (IGSC), 2022, : 75 - 80
  • [27] Edge human activity recognition using federated learning on constrained devices
    Trotta, Angelo
    Montori, Federico
    Ciabattini, Leonardo
    Billia, Giulio
    Bononi, Luciano
    Di Felice, Marco
    PERVASIVE AND MOBILE COMPUTING, 2024, 104
  • [28] Deployment of Machine Learning Algorithms on Resource-Constrained Hardware Platforms for Prosthetics
    Just, Fabian
    Ghinami, Chiara
    Zbinden, Jan
    Ortiz-Catalan, Max
    IEEE ACCESS, 2024, 12 : 40439 - 40449
  • [29] Lightweight and Resource-Constrained Learning Network for Face Recognition with Performance Optimization
    Li, Hsiao-Chi
    Deng, Zong-Yue
    Chiang, Hsin-Han
    SENSORS, 2020, 20 (21) : 1 - 20
  • [30] Adversarial Training Method for Machine Learning Model in a Resource-Constrained Environment
    Rajhi, Mohammed
    Pissinou, Niki
    PROCEEDINGS OF THE 19TH ACM INTERNATIONAL SYMPOSIUM ON QOS AND SECURITY FOR WIRELESS AND MOBILE NETWORKS, Q2SWINET 2023, 2023, : 87 - 95