2022 the 6th International Conference on Innovation in Artificial Intelligence (ICIAI) 2022
DOI: 10.1145/3529466.3529492
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Music generation based on emotional EEG

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Cited by 6 publications
(4 citation statements)
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“…This approach not only expands the sample size but also allows deep learning algorithms to extract richer information, achieving commendable results in emotion recognition studies. However, the suitability of this method for more complex cognitive activities [ 43 , 44 ], such as those involved in musical creativity, requires further experimental validation. The present study selected individuals with the highest recognition rates from two groups of subjects.…”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…This approach not only expands the sample size but also allows deep learning algorithms to extract richer information, achieving commendable results in emotion recognition studies. However, the suitability of this method for more complex cognitive activities [ 43 , 44 ], such as those involved in musical creativity, requires further experimental validation. The present study selected individuals with the highest recognition rates from two groups of subjects.…”
Section: Resultsmentioning
confidence: 99%
“…The framework of the SSAMAN is shown in Figure 3. In the SSAM model, the preprocessed, collected signals are first decomposed into four frequency bands most relevant to cognitive activities: the θ band (4-7 Hz), α band (8-13 Hz), β band (14-30 Hz), and γ band (31)(32)(33)(34)(35)(36)(37)(38)(39)(40)(41)(42)(43)(44)(45). A feature extraction module and a feature mapping module are then employed to convert the extracted feature sequences.…”
Section: Proposed Ssam Network Frameworkmentioning
confidence: 99%
“…It has been widely approved that kernel-based SVM has ensured better representation for samples and robustness. Thus, kernel-based SVM has been popular in MER (Thammasan et al, 2017a ; Avramidis et al, 2021 ; Luo et al, 2022 ). Other machine learning methods like random forest (Pisipati and Nandy, 2021 ) and KNN (Bhatti et al, 2016 ) were also developed for MER.…”
Section: Eeg-based Music Emotion Recognitionmentioning
confidence: 99%
“…LSTM was born for time series data since it can keep track of arbitrary long-term dependencies in the input sequences. Luo et al ( 2022 ) utilizes LSTM for sequence generation in his work. Additionally, deep learning algorithms overcome a troublesome and controversial problem, namely feature extraction, which liberates researchers from handcrafted feature selection to a certain extent.…”
Section: Eeg-based Music Emotion Recognitionmentioning
confidence: 99%