Recently, electrical charge (Q) variation (VAR) sensors have proven valuable in recognizing physio-muscular signals. In the act of driving, the muscle contraction of the hands provides information whether the driver is actually impressing forces on the steering wheel grip. This paper proposes the preliminary results of using QVAR sensor by STMicroelectronics, for gesture recognition, by measuring and processing the signal collected through wrist-electrodes to detect hand opening and closing. Another contribution is that the results are inferenced implementing a Decision Tree (DT) algorithm directly on the sensor side, the LSM6DSV16X, without any additional hardware, exploiting the use of the Machine Learning Core (MLC) provided by STMicroelectronics. The implementation of on-sensor intelligence paves the way for efficient deployment in scenarios where energy efficiency and privacy preservation are priorities.
Preliminary analysis of the exploitation of QVAR sensor for gesture recognition / Messina, Alfonso; Lazzaro, Alessia; Carotenuto, Riccardo; Merenda, Massimo. - (2025), pp. 1-7. ( 10th International Conference on Smart and Sustainable Technologies, SpliTech 2025 University of Split, Faculty of Electrical Engineering, Mechanical Engineering and Naval Architecture (FESB), hrv 2025) [10.23919/splitech65624.2025.11091795].
Preliminary analysis of the exploitation of QVAR sensor for gesture recognition
Messina, Alfonso;Lazzaro, Alessia;Carotenuto, Riccardo;Merenda, Massimo
2025-01-01
Abstract
Recently, electrical charge (Q) variation (VAR) sensors have proven valuable in recognizing physio-muscular signals. In the act of driving, the muscle contraction of the hands provides information whether the driver is actually impressing forces on the steering wheel grip. This paper proposes the preliminary results of using QVAR sensor by STMicroelectronics, for gesture recognition, by measuring and processing the signal collected through wrist-electrodes to detect hand opening and closing. Another contribution is that the results are inferenced implementing a Decision Tree (DT) algorithm directly on the sensor side, the LSM6DSV16X, without any additional hardware, exploiting the use of the Machine Learning Core (MLC) provided by STMicroelectronics. The implementation of on-sensor intelligence paves the way for efficient deployment in scenarios where energy efficiency and privacy preservation are priorities.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


