End-To-End Dilated Variational Autoencoder with Bottleneck Discriminative Loss for Sound Morphing -- A Preliminary Study
Matteo Lionello, Hendrik Purwins

TL;DR
This study explores an end-to-end variational autoencoder with dilation layers for sound morphing, demonstrating improved class separation and topology preservation over regular convolutional VAEs, with promising results on spoken digits and drum sounds.
Contribution
It introduces a dilated VAE variant and a combined loss function, showing enhanced sound class separation and topology preservation for sound morphing tasks.
Findings
DC-VAE outperforms CC-VAE in class separation
DC-VAE better preserves topology in latent space
Effective for morphing spoken digits and drum sounds
Abstract
We present a preliminary study on an end-to-end variational autoencoder (VAE) for sound morphing. Two VAE variants are compared: VAE with dilation layers (DC-VAE) and VAE only with regular convolutional layers (CC-VAE). We combine the following loss functions: 1) the time-domain mean-squared error for reconstructing the input signal, 2) the Kullback-Leibler divergence to the standard normal distribution in the bottleneck layer, and 3) the classification loss calculated from the bottleneck representation. On a database of spoken digits, we use 1-nearest neighbor classification to show that the sound classes separate in the bottleneck layer. We introduce the Mel-frequency cepstrum coefficient dynamic time warping (MFCC-DTW) deviation as a measure of how well the VAE decoder projects the class center in the latent (bottleneck) layer to the center of the sounds of that class in the audio…
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