Two Ways to Learn Audio Embeddings
Last Updated on July 25, 2023 by Editorial Team
Author(s): Edward Ma
Originally published on Towards AI.
Speech2Vec with Skip-gram and CBOW
Photo by Álvaro Bernal on Unsplash
Mel-frequency cepstral coefficients (MFCC), zero-crossing rate are some of classical feature for audio. It can be extracted via the library easily. However, it may not able to provide a high-quality signal or input for deep learning models nowadays.
Two teams of researchers propose a different way to learn audio embeddings but not leveraging those classical features. Chung and Glass (2018) proposes to learn word-based embeddings while Haque et al. (2019) suggests learning sentence-based embeddings.
Chung and Glass are inspired by word2vec to propose a different way to learn audio embeddings. word2vec leverages skip-gram or continuous bag-of-word (CBOW)… Read the full blog for free on Medium.
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