首页|New Findings from East China University of Science and Technology in the Area of Support Vector Machines Described (Mechanomyography Signals Pattern Recognition In Hand Movements Using Swarm Intelligence Algorithm Optimized Support Vector ...)

New Findings from East China University of Science and Technology in the Area of Support Vector Machines Described (Mechanomyography Signals Pattern Recognition In Hand Movements Using Swarm Intelligence Algorithm Optimized Support Vector ...)

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Fresh data on Support Vector Machines are presented in a new report. According to news reporting originating in Shanghai, People’s Republic of China, by NewsRx journalists, research stated, “On the basis of extracting mechanomyography (MMG) signal features, the classification of hand movements has certain application values in human -machine interaction systems and wearable devices. In this paper, pattern recognition of hand movements based on MMG signal is studied with swarm intelligence algorithms introduced to optimize support vector machine (SVM).” Financial support for this research came from Shanghai University Youth Teacher Training Assistance Scheme. The news reporters obtained a quote from the research from the East China University of Science and Technology, “Time domain (TD) features, wavelet packet node energy (WPNE) features, frequency domain (FD) features, convolution neural network (CNN) features were extracted from each channel to constitute different feature sets. Three novel swarm intelligence algorithms (i.e., bald eagle search (BES), sparrow search algorithm (SSA), grey wolf optimization (GWO)) optimized SVM is proposed to train the models and recognition of hand movements are tested for each MMG feature extraction method. Using GWO as the optimization algorithm, time consumption is less than using the other two swarm algorithms. Using GWO with TD+FD features can obtain the classification accuracy of 93.55 %, which is higher than other methods while using CNN to extract features can be independent of domain knowledge.”

ShanghaiPeople’s Republic of ChinaAsiaAlgorithmsEmerging TechnologiesMachine LearningSupport Vector MachinesSwarm IntelligenceVector MachinesEast China University of Science and Technology

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.23)
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