SizeGAN: Improving Size Representation in Clothing Catalogs
This addresses the lack of body shape and garment size diversity in online clothing catalogs, which is an incremental improvement for e-commerce and fashion technology.
The paper tackles the problem of size under-representation in online clothing catalogs by developing SizeGAN, a conditional generative adversarial network that generates images of garments and models in new target sizes. Results from user studies show SizeGAN outperforms alternative methods in realism, garment faithfulness, and size accuracy.
Online clothing catalogs lack diversity in body shape and garment size. Brands commonly display their garments on models of one or two sizes, rarely including plus-size models. To our knowledge, our paper presents the first method for generating images of garments and models in a new target size to tackle the size under-representation problem. Our primary technical contribution is a conditional generative adversarial network that learns deformation fields at multiple resolutions to realistically change the size of models and garments. Results from our two user studies show SizeGAN outperforms alternative methods along three dimensions -- realism, garment faithfulness, and size -- which are all important for real world use.