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http://dx.doi.org/10.9728/dcs.2018.19.3.435

Face Morphing Using Generative Adversarial Networks  

Han, Yoon (Department of Big Data Application and Security, Korea University)
Kim, Hyoung Joong (Department of Big Data Application and Security, Korea University)
Publication Information
Journal of Digital Contents Society / v.19, no.3, 2018 , pp. 435-443 More about this Journal
Abstract
Recently, with the explosive development of computing power, various methods such as RNN and CNN have been proposed under the name of Deep Learning, which solve many problems of Computer Vision have. The Generative Adversarial Network, released in 2014, showed that the problem of computer vision can be sufficiently solved in unsupervised learning, and the generation domain can also be studied using learned generators. GAN is being developed in various forms in combination with various models. Machine learning has difficulty in collecting data. If it is too large, it is difficult to refine the effective data set by removing the noise. If it is too small, the small difference becomes too big noise, and learning is not easy. In this paper, we apply a deep CNN model for extracting facial region in image frame to GAN model as a preprocessing filter, and propose a method to produce composite images of various facial expressions by stably learning with limited collection data of two persons.
Keywords
Generative adversarial network; face morphing; DCGAN; dCNN; unsupervised learning;
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Times Cited By KSCI : 1  (Citation Analysis)
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