Publication | Closed Access
Deep Adaptation Control for Acoustic Echo Cancellation
15
Citations
15
References
2022
Year
Deep Neural NetworksAdaptation ControlMachine LearningEngineeringHealth SciencesSpeech SynthesisSpeech EnhancementDeep Adaptation ControlRobust Speech RecognitionSpeech ProcessingDistant Speech RecognitionVoice RecognitionAcoustic Echo CancellationDeep LearningActive Noise ControlSignal ProcessingSpeech Recognition
We propose a general framework for adaptation control using deep neural networks (NNs) and apply it to acoustic echo cancellation (AEC). First, the optimal step-size that controls the adaptation is derived offline by solving a constrained nonlinear optimization problem that minimizes the adaptive filter misadjustment. Then, a deep NN is trained to learn the relation between the input data and the optimal step-size. In real-time, the NN infers the optimal step-size from streaming data and feeds it to an NLMS filter for AEC. This data-driven method makes no assumptions on the acoustic setup and is entirely non-parametric. Experiments with 100 h of real and synthetic data show that the proposed method outperforms the competition in echo cancellation, speech distortion, and convergence during both single-talk and double-talk.
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