2010
DOI: 10.3844/jcssp.2010.706.715
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Advances in Electromyogram Signal Classification to Improve the Quality of Life for the Disabled and Aged People

Abstract: Problem statement: The social demands for the Quality Of Life (QOL) are increasing with the exponentially expanding silver generation. To improve the QOL of the disabled and elderly people, robotic researchers and biomedical engineers have been trying to combine their techniques into the rehabilitation systems. Various biomedical signals (biosignals) acquired from a specialized tissue, organ, or cell system like the nervous system are the driving force for the entire system. Examples of biosignals inclu… Show more

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Cited by 44 publications
(20 citation statements)
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“…Artificial Neural Networks (ANN) have emerged as a significant and efficient tool for analyzing complex data and pattern classification. The ANNs are formed by mimicking the low-level tasks of biological neurons which make them particularly useful for recognizing and classifying complex patterns [4]. Some of the pioneer research work for EMG signal classification task can be mentioned herewith: integral absolute value (IAV) feature based feed-forward ANN [5], AR parameter based ANN [6], independent component analysis (ICA) based ANN [7], different multi-layer perceptron (MLP) based neural network [8]- [10], Hopfield and adaptive resonance theory (ART) based neural network, and later finite impulse response neural network (FIRNN) [11], and linear vector quantization (LVQ) type ANN [12].…”
Section: Introductionmentioning
confidence: 99%
“…Artificial Neural Networks (ANN) have emerged as a significant and efficient tool for analyzing complex data and pattern classification. The ANNs are formed by mimicking the low-level tasks of biological neurons which make them particularly useful for recognizing and classifying complex patterns [4]. Some of the pioneer research work for EMG signal classification task can be mentioned herewith: integral absolute value (IAV) feature based feed-forward ANN [5], AR parameter based ANN [6], independent component analysis (ICA) based ANN [7], different multi-layer perceptron (MLP) based neural network [8]- [10], Hopfield and adaptive resonance theory (ART) based neural network, and later finite impulse response neural network (FIRNN) [11], and linear vector quantization (LVQ) type ANN [12].…”
Section: Introductionmentioning
confidence: 99%
“…There are many efforts in fuzzy approach (Ajiboye and Weir, 2005) and Evidence Accumulation (EA) method was applied by Gazzoni et al, (2004). Neuro-Fuzzy approach has also been used for EMG classification especially in machine control fields (Kiguchi et al, 2003;Ahsan et al, 2010). Then, FCNN, simplified fuzzy ARTMAP and FMMNN were introduced by and Han et al (2004) respectively.…”
Section: Introductionmentioning
confidence: 99%
“…Also the power spectral density of the denoised signal is plotted. From the observations the performance of both adaptive filter and the Neuro-fuzzy filter is noted (Ahsan et al, 2010). By comparative study we thereby conclude that the performance of Neuro-Fuzzy filter is better than the Adaptive filter.…”
Section: Resultsmentioning
confidence: 75%
“…Croft and Barry (2006) reviews a number of methods of dealing with ocular artifacts in EEG, focusing on the relative merits of a variety of EOG correction procedures (Ahsan et al, 2010). Describes the basic concepts of wavelet analysis and other applications.…”
Section: Introductionmentioning
confidence: 99%