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HumanGAN: generative adversarial network with human-based discriminator and its evaluation in speech perception modeling

Authors :
Fujii, Kazuki
Saito, Yuki
Takamichi, Shinnosuke
Baba, Yukino
Saruwatari, Hiroshi
Publication Year :
2019

Abstract

We propose the HumanGAN, a generative adversarial network (GAN) incorporating human perception as a discriminator. A basic GAN trains a generator to represent a real-data distribution by fooling the discriminator that distinguishes real and generated data. Therefore, the basic GAN cannot represent the outside of a real-data distribution. In the case of speech perception, humans can recognize not only human voices but also processed (i.e., a non-existent human) voices as human voice. Such a human-acceptable distribution is typically wider than a real-data one and cannot be modeled by the basic GAN. To model the human-acceptable distribution, we formulate a backpropagation-based generator training algorithm by regarding human perception as a black-boxed discriminator. The training efficiently iterates generator training by using a computer and discrimination by crowdsourcing. We evaluate our HumanGAN in speech naturalness modeling and demonstrate that it can represent a human-acceptable distribution that is wider than a real-data distribution.<br />Comment: Submitted to IEEE ICASSP 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1909.11391
Document Type :
Working Paper