2021
DOI: 10.48550/arxiv.2107.10843
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HARP-Net: Hyper-Autoencoded Reconstruction Propagation for Scalable Neural Audio Coding

Abstract: We propose a novel autoencoder architecture that improves the architectural scalability of general-purpose neural audio coding models. An autoencoder-based codec employs quantization to turn its bottleneck layer activation into bitstrings, a process that hinders information flow between the encoder and decoder parts. To circumvent this issue, we employ additional skip connections between the corresponding pair of encoder-decoder layers. The assumption is that, in a mirrored autoencoder topology, a decoder laye… Show more

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