Real-Time biosignal classification in power-constrained embedded applications is a key step in designing portable e-healtb devices requiring hardware integration along with concurrent signal processing. This paper presents an application based on a novel biomedical System-On-Chip (SoC) for signal acquisition and processing combining a homogeneous multi-core cluster with a versatile bio-potential front-end. The presented implementation acquires raw EMG signals from 3 passive gel-electrodes and classifies 3 hand gestures using a Support Vector Machine (SVM) pattern recognition algorithm. Performance matches state-of-The-Art high-end systems both in terms of recognition accuracy (>S5%) and of real-Time execution (gesture recognition time 30...
Hand gestures are a form of non-verbal communication used by individuals in conjunction with speech ...
Hand gestures are a form of non-verbal communication used by individuals in conjunction with speech ...
Hand movement classification via surface electromyographic (sEMG) signal is a well-established appro...
Real-time biosignal classification in power-constrained embedded applications is a key step in desig...
Real-Time biosignal classification in power-constrained embedded applications is a key step in desig...
Wearable devices offer interesting features, such as low cost and user friendliness, but their use f...
With the recent improvement of flexible electronics, wearable systems are becoming more and more uno...
An electromyogram (EMG) signal acquisition system capable of real time classification of several fac...
With the emergence of edge-computing platforms, the applications of smart wearable devices are immen...
This work presents a wearable EMG gesture recognition system based on the hyperdimensional (HD) comp...
This paper presents a wearable electromyographic gesture recognition system based on the hyperdimens...
Conditioning and processing of biological signals represent interesting challenges for wearable elec...
Hand gestures are a form of non-verbal communication used by individuals in conjunction with speech ...
Hand gestures are a form of non-verbal communication used by individuals in conjunction with speech ...
Hand movement classification via surface electromyographic (sEMG) signal is a well-established appro...
Real-time biosignal classification in power-constrained embedded applications is a key step in desig...
Real-Time biosignal classification in power-constrained embedded applications is a key step in desig...
Wearable devices offer interesting features, such as low cost and user friendliness, but their use f...
With the recent improvement of flexible electronics, wearable systems are becoming more and more uno...
An electromyogram (EMG) signal acquisition system capable of real time classification of several fac...
With the emergence of edge-computing platforms, the applications of smart wearable devices are immen...
This work presents a wearable EMG gesture recognition system based on the hyperdimensional (HD) comp...
This paper presents a wearable electromyographic gesture recognition system based on the hyperdimens...
Conditioning and processing of biological signals represent interesting challenges for wearable elec...
Hand gestures are a form of non-verbal communication used by individuals in conjunction with speech ...
Hand gestures are a form of non-verbal communication used by individuals in conjunction with speech ...
Hand movement classification via surface electromyographic (sEMG) signal is a well-established appro...