Ultrasound-based Hand Gesture Recognition has gained significant attention in recent years. While static gesture recognition has been extensively explored, only a few works have tackled the task of movement regression for real-time tracking, despite its importance for the development of natural and smooth interaction strategies. In this paper, we demonstrate the regression of 3 hand-wrist Degrees of Freedom (DoFs) using a lightweight, A-mode-based, truly wearable US armband featuring four transducers and WULPUS, an ultra-low-power acquisition device. We collect US data, synchronized with an optical motion capture system to establish a ground truth, from 5 subjects. We achieve state-of-the-art performance with an average root-mean-squared-error (RMSE) of 7.32 ± 1.97 and mean-absolute-error (MAE) of 5.31 ± 1.42. Additionally, we demonstrate, for the first time, robustness with respect to transducer repositioning between acquisition sessions, achieving an average RMSE value of 11.11 ± 4.14 and a MAE of 8.46 ± 3.58. Finally, we deploy our pipeline on a real-time low-power microcontroller, showcasing the first instance of multi-DoF regression based on A-mode US data on an embedded device, with a power consumption lower than 30mW and end-to-end latency of ≈ 80 ms.
Tracking of Wrist and Hand Kinematics with Ultra Low Power Wearable A-mode Ultrasound / Spacone, G.; Vostrikov, S.; Kartsch, V.; Benatti, S.; Benini, L.; Cossettini, A.. - In: IEEE TRANSACTIONS ON BIOMEDICAL CIRCUITS AND SYSTEMS. - ISSN 1932-4545. - 19:3(2025), pp. 536-548. [10.1109/TBCAS.2024.3465239]
Tracking of Wrist and Hand Kinematics with Ultra Low Power Wearable A-mode Ultrasound
Benatti S.;
2025
Abstract
Ultrasound-based Hand Gesture Recognition has gained significant attention in recent years. While static gesture recognition has been extensively explored, only a few works have tackled the task of movement regression for real-time tracking, despite its importance for the development of natural and smooth interaction strategies. In this paper, we demonstrate the regression of 3 hand-wrist Degrees of Freedom (DoFs) using a lightweight, A-mode-based, truly wearable US armband featuring four transducers and WULPUS, an ultra-low-power acquisition device. We collect US data, synchronized with an optical motion capture system to establish a ground truth, from 5 subjects. We achieve state-of-the-art performance with an average root-mean-squared-error (RMSE) of 7.32 ± 1.97 and mean-absolute-error (MAE) of 5.31 ± 1.42. Additionally, we demonstrate, for the first time, robustness with respect to transducer repositioning between acquisition sessions, achieving an average RMSE value of 11.11 ± 4.14 and a MAE of 8.46 ± 3.58. Finally, we deploy our pipeline on a real-time low-power microcontroller, showcasing the first instance of multi-DoF regression based on A-mode US data on an embedded device, with a power consumption lower than 30mW and end-to-end latency of ≈ 80 ms.Pubblicazioni consigliate

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