Vilagamer999/SneakGAN
StyleGAN2-ADA trained on a dataset of 2000+ sneaker images
This helps footwear designers and artists generate new, unique sneaker designs. You provide some basic style inputs, and it produces diverse images of shoes that combine different elements in novel ways. It's ideal for creatives in the fashion industry looking for fresh inspiration and variations on sneaker aesthetics.
No commits in the last 6 months.
Use this if you need to quickly explore many unique sneaker design concepts without drawing each one by hand.
Not ideal if you require hyper-realistic product photos or designs based on specific, existing brand guidelines.
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Last pushed
Sep 11, 2021
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