CVMar 29, 2022

Dressing in the Wild by Watching Dance Videos

arXiv:2203.15320v134 citationsh-index: 51
Originality Incremental advance
AI Analysis

It addresses garment-person misalignment and texture degradation in in-the-wild imagery for applications like virtual dressing, though it is incremental by combining existing flow techniques.

This paper tackles the problem of virtual try-on in real-world scenes by improving garment transfer for loose garments, challenging poses, and cluttered backgrounds, resulting in a method called wFlow that generates realistic results without paired datasets, as demonstrated on a new Dance50k dataset.

While significant progress has been made in garment transfer, one of the most applicable directions of human-centric image generation, existing works overlook the in-the-wild imagery, presenting severe garment-person misalignment as well as noticeable degradation in fine texture details. This paper, therefore, attends to virtual try-on in real-world scenes and brings essential improvements in authenticity and naturalness especially for loose garment (e.g., skirts, formal dresses), challenging poses (e.g., cross arms, bent legs), and cluttered backgrounds. Specifically, we find that the pixel flow excels at handling loose garments whereas the vertex flow is preferred for hard poses, and by combining their advantages we propose a novel generative network called wFlow that can effectively push up garment transfer to in-the-wild context. Moreover, former approaches require paired images for training. Instead, we cut down the laboriousness by working on a newly constructed large-scale video dataset named Dance50k with self-supervised cross-frame training and an online cycle optimization. The proposed Dance50k can boost real-world virtual dressing by covering a wide variety of garments under dancing poses. Extensive experiments demonstrate the superiority of our wFlow in generating realistic garment transfer results for in-the-wild images without resorting to expensive paired datasets.

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