Hardware Deployable Edge AI Solution for Posture Classification Using mmWave Radar and Low- Computational Machine Learning Model

Identifying correct human postures is crucial in areas, such as patient care, in hospitals. However, the traditional vision-based methods widely used for this purpose raise privacy concerns for the subject, and the other wearable sensor-based approaches are impractical for real-world scenarios. In t...

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Published inIEEE sensors journal Vol. 24; no. 16; pp. 26836 - 26844
Main Authors Pratap Singh, Yash, Gupta, Aham, Chaudhary, Devansh, Wajid, Mohd, Srivastava, Abhishek, Mahajan, Pranjal
Format Journal Article
LanguageEnglish
Published New York IEEE 15.08.2024
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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Summary:Identifying correct human postures is crucial in areas, such as patient care, in hospitals. However, the traditional vision-based methods widely used for this purpose raise privacy concerns for the subject, and the other wearable sensor-based approaches are impractical for real-world scenarios. In this article, we propose a contactless, privacy-conscious, and memory-efficient posture classification system based on a millimeter-wave (mmWave) radar. This system utilizes 3-D point-cloud data captured using Texas Instrument's IWR1843BOOST frequency-modulated continuous-wave (FMCW) radar module to classify the posture of the subject. Two types of datasets are extracted from these radar data: 1) image dataset derived from the isometric view of the point-cloud data and 2) spatial coordinates dataset also extracted from the point-cloud data. A low-computational tiny machine learning (TinyML) model is employed on the datasets for efficient implementation on embedded hardware, Raspberry Pi 3 B+. The proposed model's parameters were quantized to 8 bits (int8), which accurately classify four postures, i.e., standing, sitting, lying, and bending, with an accuracy of 98.97% for the image data. However, to make it more computationally efficient, the int8 quantized TinyML model was trained on the spatial coordinates dataset, giving an accuracy of 96.12%. This highlights the efficiency and effectiveness of our proposed lightweight model that can be deployed on edge devices for real-world applications.
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ISSN:1530-437X
1558-1748
DOI:10.1109/JSEN.2024.3416390