Corpus ID: 237491923

BeautifAI - A Personalised Occasion-oriented Makeup Recommendation System

  title={BeautifAI - A Personalised Occasion-oriented Makeup Recommendation System},
  author={Kshitij Gulati and Gaurav Verma and Mukesh K. Mohania and Ashish Kundu},
With the global metamorphosis of the beauty industry and the rising demand for beauty products worldwide, the need for an efficacious makeup recommendation system has never been more. Despite the significant advancements made towards personalised makeup recommendation, the current research still falls short of incorporating the context of occasion in makeup recommendation and integrating feedback for users. In this work, we propose BeautifAI, a novel makeup recommendation system, delivering… Expand

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