2024
DOI: 10.3233/jifs-237363
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Deep learning techniques for monitoring speech and vision improvement in therapy patients using big data

S. Vimala,
K. Valarmathi

Abstract: This study proposes a novel method using hybrid CNN-LSTM networks to measure and predict the effectiveness of speech and vision therapy. Traditional methods for evaluating therapy often rely on subjective assessments, lacking precision and efficiency. By combining CNN for visual data and MFCC for speech, alongside LSTM for temporal dependencies, the system captures dynamic changes in patients’ conditions. Pre-processing of audio and visual data enhances accuracy, and the model’s performance outperforms existin… Show more

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