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VQ-VAE with Neural Gas and Fuzzy c-Means

  • VQ-VAE is a successful generative model which can perform lossy compression. It combines deep learning with vector quantization to achieve a discrete compressed representation of the data. We explore using different vector quantization techniques with VQ-VAE, mainly neural gas and fuzzy c-means. Moreover, VQ-VAE consists of a non-differentiable discrete mapping which we will explore and propose changes to the original VQ-VAE loss to fit the alternative vector quantization techniques.

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Metadaten
Author:Yahya Badran
Advisor:Thomas Villmann, Marika Kaden
Document Type:Master's Thesis
Language:English
Year of Completion:2021
Granting Institution:Hochschule Mittweida
Release Date:2022/03/08
GND Keyword:Vektorquantisierung; Deep learning
Institutes:Angewandte Computer‐ und Bio­wissen­schaften
DDC classes:621.3822 digitale Signalverarbeitung, Vektorquantisierung
Open Access:Frei zugänglich
Licence (German):License LogoUrheberrechtlich geschützt