Disentangled Cycle Consistency for Highly-realistic Virtual Try-On, CVPR 2021

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Deep LearningDCTON
Overview

Disentangled Cycle Consistency for Highly-realistic Virtual Try-On, CVPR 2021

[WIP] The code for CVPR 2021 paper 'Disentangled Cycle Consistency for Highly-realistic Virtual Try-On' image

ENV Requirements

python 3.6

pytorch 1.0.0

torchvision 0.3.0

cuda 10.0

opencv

Dataset

1.VITON

2.VITON-HQ (collected by ourself)

Citation

WIP
Owner
ChongjianGE
🎯 PhD in Computer Vision ☑️ MSc & BEng in Electrical Engineering
ChongjianGE
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