BC-GAN: A Generative Adversarial Network for Synthesizing a Batch of Collocated Clothing
Journal:
arXiv
Published Date:
Feb 3, 2025
Abstract
Collocated clothing synthesis using generative networks has become an
emerging topic in the field of fashion intelligence, as it has significant
potential economic value to increase revenue in the fashion industry. In
previous studies, several works have attempted to synthesize
visually-collocated clothing based on a given clothing item using generative
adversarial networks (GANs) with promising results. These works, however, can
only accomplish the synthesis of one collocated clothing item each time.
Nevertheless, users may require different clothing items to meet their multiple
choices due to their personal tastes and different dressing scenarios. To
address this limitation, we introduce a novel batch clothing generation
framework, named BC-GAN, which is able to synthesize multiple
visually-collocated clothing images simultaneously. In particular, to further
improve the fashion compatibility of synthetic results, BC-GAN proposes a new
fashion compatibility discriminator in a contrastive learning perspective by
fully exploiting the collocation relationship among all clothing items. Our
model was examined in a large-scale dataset with compatible outfits constructed
by ourselves. Extensive experiment results confirmed the effectiveness of our
proposed BC-GAN in comparison to state-of-the-art methods in terms of
diversity, visual authenticity, and fashion compatibility.