Abstract

Exploring the integration of Stable Diffusion into e-commerce through virtual try-on technology, this abstract outlines how AI advancements are reshaping the way consumers experience online shopping by providing a precise and customized method for assessing clothing fit without physical trials. It scrutinizes the challenges and technical efforts involved in embedding Stable Diffusion, including the nuances of model training and generating realistic images, which addresses the prevalent online shopping hurdles of fitting and style visualization. The impact of these advancements on reducing return rates and boosting customer satisfaction is illuminated through fashion industry case studies. Moreover, the abstract navigates the ethical, privacy, sustainability, and inclusivity considerations vital to the technology's adoption and proposes directions for future research to enhance its scalability, user engagement, and overall efficacy in the e-commerce domain. This comprehensive analysis aims to foster ongoing innovation and development in virtual try-on technologies, envisioning a more personalized, efficient, and enriching online shopping journey. Key Words: Stable Diffusion, virtual try-on, Artificial Intelligence

Full Text
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