Proceedings of the 7th International Conference on Computer Engineering and Networks — PoS(CENet2017) 2017
DOI: 10.22323/1.299.0001
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Classification of EEG Signal by STFT-CNN Framework: Identification of Right-/left-hand Motor Imagination in BCI Systems

Abstract: This paper described the relationship between EEG signals and MI in BCI system. EEG signals are used to classify the direction of motioninto two kinds: left and right. We extracted features from original EEG data using STFT and put them into CNN. The result showed that the framework of STFT-CNN had higher average test accuracy. Furthermore, the generations of motor imagery were analyzed, and the result showed that better classification results will appear in the middle stage with its classification accuracy re… Show more

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Cited by 15 publications
(11 citation statements)
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“…In the ConvNet, the first convolutional layer works as a frequential filter, in which the outcome consists of four different band‐pass filters that minimize the error at the output. In accordance with the input structures used in image processing, the EEG input to a ConvNet is usually reshaped into a 2D distribution, by arranging channels along the rows and time samples in the columns (Schirrmeister et al., 2017; Tang, Li, & Sun, 2016) or by transforming the input into a new space (Uktveris & Jusas, 2017), e.g., to a time‐frequency domain through Fourier transform and averaging along the channels (Lu, Jiang, & Liu, 2017; Soare, 2016). Taking this into consideration, only minimal and automatic pre‐processing (baseline correction and notch filtering) was performed in this study prior to the classification stage, and no epochs were removed.…”
Section: Discussionmentioning
confidence: 99%
“…In the ConvNet, the first convolutional layer works as a frequential filter, in which the outcome consists of four different band‐pass filters that minimize the error at the output. In accordance with the input structures used in image processing, the EEG input to a ConvNet is usually reshaped into a 2D distribution, by arranging channels along the rows and time samples in the columns (Schirrmeister et al., 2017; Tang, Li, & Sun, 2016) or by transforming the input into a new space (Uktveris & Jusas, 2017), e.g., to a time‐frequency domain through Fourier transform and averaging along the channels (Lu, Jiang, & Liu, 2017; Soare, 2016). Taking this into consideration, only minimal and automatic pre‐processing (baseline correction and notch filtering) was performed in this study prior to the classification stage, and no epochs were removed.…”
Section: Discussionmentioning
confidence: 99%
“…In this model, the first convolutional layer works as a frequential filter, in which the outcome consists of four different band-pass filters that minimise the error at the output. In accordance with the input structures used in image processing, the EEG input to a ConvNet is usually reshaped into a 2D distribution, by arranging channels along the rows and time samples in the columns [49,50] or by transforming the input into a new space [8], e.g., to a time-frequency domain through Fourier transform and averaging along the channels [51,52]. The ConvNet implemented in this study considered the localisation of the electrodes in order to keep the spatial relationship between them.…”
Section: Methodological Aspects Of Movement Predictionmentioning
confidence: 99%
“…Our research works are specializing in building up induced file database for generating different emotions, EEG database, and facial expression database, and in researching on emotion recognition, and intelligent HCI. Based on the study that we have done previously [25]- [27], we have proposed the approach to building up DEVI to construct ground truth dataset for EEG-based emotion recognition.…”
Section: Related Workmentioning
confidence: 99%
“…Inspired by such a common sense, we have proposed an approach to building up "Ground Truth Dataset for EEGbased Emotion Recognition with Visual Indication" (DEVI) based on what we have done previously [25]- [27], in order to set up an accurate ground truth dataset for the training and test of the EEG-based emotion recognition models. This paper is organized as follows: we describe some works closely related with building up labeled dataset for EEG-based emotion recognition to highlight our proposal in Section II.…”
Section: Introductionmentioning
confidence: 99%