Publication | Open Access
Deep Residual Echo Suppression With A Tunable Tradeoff Between Signal Distortion And Echo Suppression
21
Citations
18
References
2021
Year
Unknown Venue
Aec ChallengeResidual Echo SuppressionEngineeringSpeech CodingHealth SciencesEcho SuppressionAudio Signal ProcessingComputer EngineeringNoiseSpeech EnhancementSpeech ProcessingSpeech SeparationUltrasoundAec Challenge DatabaseDistant Speech RecognitionSignal ProcessingNoise ReductionSpeech Recognition
In this paper, we propose a residual echo suppression method using a UNet neural network that directly maps the outputs of a linear acoustic echo canceler to the desired signal in the spectral domain. This system embeds a design parameter that allows a tunable tradeoff between the desired-signal distortion and residual echo suppression in double-talk scenarios. The system employs 136 thousand parameters, and requires 1.6 Giga floating-point operations per second and 10 Mega-bytes of memory. The implementation satisfies both the timing requirements of the AEC challenge and the computational and memory limitations of on-device applications. Experiments are conducted with 161 h of data from the AEC challenge database and from real independent recordings. We demonstrate the performance of the proposed system in real-life conditions and compare it with two competing methods regarding echo suppression and desired-signal distortion, generalization to various environments, and robustness to high echo levels.
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