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E-commerce platforms focused on fashion, imagebased virtual try-on solutions have shown considerable potential for enhancing the user experience and increasing customer satisfaction. The 2 D solutions that exist fail to provide a complete satisfactory experience as they lack the capability to take into consideration customer-specific postures and modifications. They rely majorly on generative models due to which reconstructionof high-quality images of the clothing is difficult. The clothing in 3 D V T solutions is created as 3 D models, which are thendraped on 3 D human avatars with various body types. A huge catalog of digitized 3 D garment and clothing models is a crucial requirement for a 3 D VT system, but this requirement requires expensive multiview capture/scan equipment and cannot scaleup for big catalog volumes, especially in the current fast-fashion settings. Hence, we propose a video virtual Try-On model which is based on fully learnable characteristics preserving virtual try on network C P VTON 3. It first forms a TSP for transforming clothes to fit the target body shape via Geometric Matching Module. Then use a GAN based model for pose transfer. The accuracy resulting from such a model could help in decreasing the waiting time in traditional stores, and also help in decreasing sanitizing costs.
Toliya et al. (Mon,) studied this question.