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Automaitc Generation of Fashion Image Dataset by Using Progressive Growing GAN

Journal of The Korea Internet of Things Society / Journal of The Korea Internet of Things Society, (P)2799-4791;
2018, v.4 no.2, pp.1-6
https://doi.org/https://doi.org/10.20465/kiots.2018.4.2.001
Kim, Yanghee
Lee, Chanhee
Whang, Taesun
Kim, Gyeongmin
Lim, Heuiseok
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Abstract

Techniques for generating new sample data from higher dimensional data such as images have been utilized variously for speech synthesis, image conversion and image restoration. This paper adopts Progressive Growing of Generative Adversarial Networks(PG-GANs) as an implementation model to generate high-resolution images and to enhance variation of the generated images, and applied it to fashion image data. PG-GANs allows the generator and discriminator to progressively learn at the same time, continuously adding new layers from low-resolution images to result high-resolution images. We also proposed a Mini-batch Discrimination method to increase the diversity of generated data, and proposed a Sliced Wasserstein Distance(SWD) evaluation method instead of the existing MS-SSIM to evaluate the GAN model.

keywords
딥러닝, 이미지, 생성 모델, 패션 기술

Journal of The Korea Internet of Things Society