DocumentCode :
174327
Title :
A novel classification method with unlearned-class detection based on a gaussian mixture model
Author :
Shima, Keisuke ; Aoki, Toyohiro
Author_Institution :
Yokohama Nat. Univ., Yokohama, Japan
fYear :
2014
fDate :
5-8 Oct. 2014
Firstpage :
3726
Lastpage :
3731
Abstract :
This paper proposes a novel method of estimating posteriori probability for learned and unlearned classes based on a Gaussian mixture model (GMM). With prior distributions of learned and unlearned classes defined as a novel GMM incorporating a one-versus-the-rest classifier, any defined/undefined class can be classified through training of the classifier using given training samples. This method can be used for bioelectric signal discrimination in various applications such as human-machine interfaces and diagnosis support systems. In the experiments reported here, artificial data generated from Gaussian distributions and electromyogram (EMG) patterns measured from the forearm muscles of a volunteer were classified to demonstrate the capabilities of the proposed method for learned and unlearned class discrimination. The results showed that the approach produces high performance for classification of learned (artificial data: 100%; EMG patterns: 95.6%) and unlearned (artificial data: 93.4%; EMG patterns: 70.4%) classes based on simple neural network comparison, and indicated that the proposed method is applicable to human-machine interfaces such as prosthetic hand control systems.
Keywords :
Gaussian processes; electromyography; medical signal processing; neural nets; EMG patterns; GMM; Gaussian distributions and electromyogram; Gaussian mixture model; bioelectric signal discrimination; diagnosis support systems; forearm muscles; human-machine interfaces; neural network comparison; novel classification method; posteriori probability estimation; unlearned class detection; Electromyography; Estimation; Gaussian mixture model; Probability; Probability density function; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Systems, Man and Cybernetics (SMC), 2014 IEEE International Conference on
Conference_Location :
San Diego, CA
Type :
conf
DOI :
10.1109/SMC.2014.6974510
Filename :
6974510
Link To Document :
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