An interactive speech therapy session using linear predictive coding in Matlab and Arduino

Speech Therapy has become an efficient tool to bring back proper speech for patients suffering from various speech disorders. Patients are more benefitted when the speech therapy session is interactive where there is a visible change in the environment. Hence, the proposed system aims at manipulating devices when the user input is correct and also indicates if the user input is incorrect. Speech recognition has been done using the concept if Linear predictive coding and Arduino Uno board is used for hardware interface.

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