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Real-time ambient sound and wake word detection

Project description

Oremi Ohunerin

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Oremi Ohunerin serves as the real-time audio detection component of the Oremi Personal Assistant project. It operates as a high-performance WebSocket server capable of concurrently identifying environmental sounds and detecting specific wake words.

Leveraging cutting-edge technologies like TensorFlow YAMNet for comprehensive environmental sound classification and PocketSphinx for precise, localized wake word identification, Ohunerin ensures highly accurate recognition of acoustic events.

Documentation

All project documentation—including features, deployment steps, the audio detection WebSocket protocol details and the complete API Reference can be found at: https://demsking.gitlab.io/oremi-ohunerin

License

Licensed under the Apache License, Version 2.0.

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