波音游戏-波音娱乐城赌球打不开

CityU researchers develop a self-supervised AI adaptation framework to enhance sensing accuracy of EMG devices

 

Surface electromyography (EMG) has been widely used to measure the electrical activity of muscles. However, the variability in EMG sensing signals due to biological differences of different users significantly degrades the performance and potential of EMG systems. Recently, researchers from City University of Hong Kong (CityU) developed a deep learning-based framework called EMGSense, which can achieve high sensing performance for new users using AI self-training techniques. This opens a new path for developing more advanced and accurate wearable EMG devices in areas like neurorehabilitation and virtual reality.

This latest invention won an award at the 21st International Conference on Pervasive Computing and Communications (PerCom 2023) held at Atlanta, USA. It helps overcome the bottleneck in existing approaches and supports the widespread adoption of EMG-based applications.

emg device
EMG-based sensing has created a lot of intelligent applications.
Photo Credit: Dr Xu Weitao / City University of Hong Kong

EMG measures the electrical activity of muscles using surface electrodes on the skin. EMG-based sensing has attracted considerable attention in recent years and has created a lot of intelligent applications, such as neurorehabilitation, activity recognition, gesture recognition and virtual reality. But a fundamental challenge in existing EMG systems is how to tackle cross-user scenarios. EMG signals can be seriously influenced by various biological factors, such as body fat, skin conditions, age and fatigue. So significant performance degradation would be caused by time-varying biological heterogeneity when the EMG system is employed by different users.

To address this challenge, researchers from the Department of Computer Science at CityU recently proposed the first low-effort, AI-empowered domain adaptation framework, called EMGSense, which provides high-accuracy EMG sensing for new users using AI-training techniques. EMGSense is a self-supervised system with a self-training AI strategy. It can cope with the performance degradation caused by inter-user biological heterogeneity.

The new framework integrates advanced self-supervised techniques into a carefully designed deep neural network (DNN) structure. It uses small-scale unlabeled data from a new user and pre-collected data from several existing users to train a discriminative model to realize intelligent applications for new users. The pre-collected data is stored in the cloud and can serve all new users, reducing the burden of data collection and annotation.

emg device
The key principle of the method is the shared common feature extractor, whose aim is to ensure the transferability of features. The combination of domain-specific feature extractors and classifiers are responsible for independently exploring the diversity among the deep features from different source domains.
Photo credit: Di, D. et al, https://ieeexplore.ieee.org/document/10099164/authors

EMGSense’s DNN structure involves two training stages, which complement each other. It first eliminates user-specific features in the feature space for easy transferring, and then it employs AI techniques to re-learn new target’s user-specific biological features in that space for high-performance EMG sensing. This allows EMGSense to adapt to new users with satisfactory performance in a low-effort, self-supervised manner without wasting significant deployment overhead.

In addition, the researchers leveraged the unlabeled data collected during the usage to achieve long-term robust performance that can handle the time-varying nature of EMG signals.

A comprehensive evaluation of two sizable datasets collected from 13 participants indicated that EMGSense achieved an average accuracy of 91.9% and 81.2% in gesture recognition and activity recognition, respectively. EMGSense also outperformed state-of-the-art EMG-oriented domain adaptation approaches by 12.5%–17.4% and achieved comparable performance with one trained in a supervised-learning manner.

EMG device
The paper’s authors, Mr Duan Di (middle) and Mr Yang Huanqi (2nd from left), received the Best Paper Award at Percom 2023, held in Atlanta, USA. Photo credit: Duan Di / City University of Hong Kong

The novel EMGSense framework has the potential to revolutionize the field of EMG sensing by reducing the burden of data collection and annotation, while achieving high accuracy in a low-effort manner. It fills the research gap in heterogeneity problems in EMG sensing and enables a variety of novel EMG-based cross-user applications, such as clinical practice, neurorehabilitation and human-machine interaction. It also makes a humble step towards the ubiquity of smart EMG wearable devices with higher performance in real-world scenarios.

The paper was published at the PerCom 2023, and it won the “Mark Weiser Best Paper Award”. The paper title is “EMGSense: A Low-Effort Self-Supervised Domain Adaptation Framework for EMG Sensing”.

EMG device
Dr Xu Weitao (4th from left) and his research team from City University of Hong Kong. Photo credit: Dr Xu Weitao / City University of Hong Kong

The first author of the research is Mr Duan Di, a PhD student in the Department of Computer Science at CityU. The corresponding author is Dr Xu Weitao, Assistant Professor in the same department. Other team members from CityU include Professor Jia Xiaohua and Mr Yang Huanqi. The research is supported mainly by the Hong Kong Research Grant Council and General Research Fund.

 

 

Contact Information

Back to top
百家乐官网稳一点的押法| 金冠百家乐官网的玩法技巧和规则| 网上的百家乐官网是假的吗| 金冠百家乐官网娱乐城| 网上娱乐城老虎机| 百家乐如何投注技巧| 利记| 百家乐破解仪恒达| 百家乐官网公式软件| 迪威百家乐官网现场| 大发888网址开户| 二八杠游戏下载| 太阳城代理最新网址| 风水学中的24向是什么| 百家乐官网视频网络游戏| 百家乐官网庄闲作千| 百家乐官网破解版下载| 百家乐官网大赢家客户端| 百家乐官网注码调整| 百家乐官网是片人的吗| 正规百家乐官网游戏下载| 优博百家乐官网现金网平台| 百家乐官网网上投注代理商| 百家乐官网声音不印网| 澳门百家乐官网在线| 百家乐官网任你博娱乐平台| 轮盘必胜法| 大发888网页免费游戏| 百家乐官网赢足球博彩皇冠| 百家乐官网网站建设| 博彩游戏机| 百家乐正网包杀| 自己做生意怎样才能带来财运| 网上百家乐哪家最好| 百家乐官网麻将筹码币| 金沙百家乐官网的玩法技巧和规则 | 汉阴县| 盈丰国际博彩网| 百家乐套装| 百家乐直揽经验| 百家乐园选蒙|