Brain signal which helps in cataloguing has turn out to be a critical fact in the area of research zone in biomedical engineering and artificial intelligence, making it predominant for sleuthing and detecting the neurological disorders in the human brain and also considering and understanding cognitive states. The Electroencephalogram i.e. EEG method is a non-invasive technique which is not painful and used to identify, detect and capture electrical signals as well as activity of the brain with high temporal tenacity features. However, the raw EEG signals are intricate and multifaceted which are non-stationary and complex to interpret or understood directly. This research paper represents an AI-based framework for categorizing the brain signals using EEG spectrogram images. This anticipated approach transforms the EEG time-series signals converted into timeβfrequency spectrogram depictions and also applies Convolutional Neural Networks (CNNs) for automatic feature extraction of the images and further doing classification. The model is basically assessed using typical performance metrics calculation including accuracy, precision, recall, F1-score and confusion matrix. The experimental discoveries reveal and demonstrate that spectrogram-based image which deep learning meaningfully improvises the classification of the performance compared to traditional or old dated machine learning methodology. This study highlights the potential and benefits of AI-driven EEG report analysis in medical diagnostics, brain and computer interfaces and cognitive reasoning of state monitoring.
Keywords
EEG signals, CNN techniques, Spectrogram, models, deep learning approach
Conclusion
This research paper represents a inclusive AI-based outline for brain signal cataloguing using images of EEG spectrogram. This is done by altering EEG signals into timeβfrequency depictions and more enhancing them and leveraging them into CNN models. The system accomplishes high sorting the performance while minimalizing manual feature engineering. This methodology proves the strong probability in healthcare diagnostics, neurotechnology and brainβcomputer interface applications. With the progressions in lightweight architectures and explicable AI, the EEG-based deep learning systems are more projected to perform a critical part in the area of next-generation intellectual healthcare resolutions.
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