3260 papers • 126 benchmarks • 313 datasets
Predicting audio packets lost during transmission.
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A simulation framework called DFTS2 is presented, which enables researchers to define the components of the CI system in TensorFlow~2, select a packet-based channel model with various parameters, and simulate system behavior under various channel conditions and error/loss control strategies.
A hybrid neural PLC architecture where the missing speech is synthesized using a generative model conditioned using a predictive model to achieve natural concealment that surpasses the quality of existing conventional PLC algorithms and ranked second in the Interspeech 2022 PLC Challenge.
A real-time time-domain packet loss concealment (PLC) neural-network (tPLCnet) that efficiently predicts lost frames from a short context buffer in a sequence-to-one (seq2one) fashion.
This paper introduces the combination of two STFT-based loss functions, mixed with the traditional GAN objective, and employs a modified PatchGAN structure as discriminator and lower the concealment time by a proper initialization of the phase reconstruction algorithm.
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