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by naveen_k
502 days ago
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Thanks! For audio based detection, I would start with collecting a large corpus of normal shows vs ad segment audio dataset. I assume the amplitude (volume changes) and frequency distribution would be unique enough to distinguish between them. Train a model using their Mel Spectrogram and deploy on-device. Microphone -> ADC -> Preprocessing -> Spectrogram Generation -> Inference -> Mute/Unmute Would be an interesting project. |
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