Hand Gesture Recognition on Edge Devices: Sensor Technologies, Algorithms, and Processing Hardware
Metadatos
Mostrar el registro completo del ítemAutor
Fertl, Elfi; Castillo Morales, María Encarnación; Stettinger, Georg; Pegalajar Cuéllar, Manuel; Morales Santos, Diego PedroEditorial
MDPI
Materia
Hand gesture recognition Edge machine learning Artificial intelligence Algorithms Signal processing
Fecha
2025-03-08Referencia bibliográfica
Fertl, E.; Castillo, E.; Stettinger, G.; Cuéllar, M.P.; Morales, D.P. Hand Gesture Recognition on Edge Devices: Sensor Technologies, Algorithms, and Processing Hardware. Sensors 2025, 25, 1687. https://doi.org/10.3390/s25061687
Patrocinador
Infineon Technologies AG; Bundesministerium für Wirtschaft und Energie (BMWi) (FKZ 19A20012D)Resumen
Hand gesture recognition (HGR) is a convenient and natural form of human–computer interaction. It is suitable for various applications. Much research has already focused on wearable device-based HGR. By contrast, this paper gives an overview focused on device-free HGR. That means we evaluate HGR systems that do not require the user to wear something like a data glove or hold a device. HGR systems are explored regarding technology, hardware, and algorithms. The interconnectedness of timing and power requirements with hardware, pre-processing algorithm, classification, and technology and how they permit more or less granularity, accuracy, and number of gestures is clearly demonstrated. Sensor modalities evaluated are WIFI, vision, radar, mobile networks, and ultrasound. The pre-processing technologies stereo vision, multiple-input multiple-output (MIMO), spectrogram, phased array, range-doppler-map, range-angle-map, doppler-angle-map, and multilateration are explored. Classification approaches with and without ML are studied. Among those with ML, assessed algorithms range from simple tree structures to transformers. All applications are evaluated taking into account their level of integration. This encompasses determining whether the application presented is suitable for edge integration, their real-time capability, whether continuous learning is implemented, which robustness was achieved, whether ML is applied, and the accuracy level. Our survey aims to provide a thorough understanding of the current state of the art in device-free HGR on edge devices and in general. Finally, on the basis of present-day challenges and opportunities in this field, we outline which further research we suggest for HGR improvement. Our goal is to promote the development of efficient and accurate gesture recognition systems.