Application of Makeup Image Optimization Recommendation System through the Analysis of BeautyGAN Based on Deep Learning

Myoung-Joo Lee, Gyu-Tae Lee
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Abstract

The purpose of this study was to identify the makeup preference of users and suggest a method to optimize the makeup style by using the preferred image for each age group through the analysis of BeautyGAN. Through this, you can propose a customized makeup style that suits you, and provide beneficial services to the makeup industry and consumers. In addition, by developing and validating new methods that effectively combine deep learning and vision systems, we aim to innovate makeup-related image conversion technology and contribute to academic and practical advances in this field. For this purpose, reference images suitable for each image were collected to implement image optimization for each age group, the input data reflected the researcher’s image, and the face was aligned and resized, after removing images with low resolution or poor lighting conditions. As a result of the performance evaluation of the BeautyGAN model, it was confirmed that the existing image was 51.26%, which is close to the BeautyGAN image of 38.89%. These results are judged to be able to provide customized makeup style suggestions or adjusted makeup effects that reflect the user’s preferences from an academic point of view, and from a practical point of view, it will be possible to improve the quality of customized beauty services by suggesting makeup styles that suit the characteristics of customers more accurately and quickly.
通过分析基于深度学习的 BeautyGAN,应用化妆图像优化推荐系统
本研究的目的是通过对 BeautyGAN 的分析,确定用户的妆容偏好,并提出利用各年龄段用户的偏好形象优化妆容风格的方法。通过这种方法,可以提出适合自己的定制化化妆风格,为化妆行业和消费者提供有益的服务。此外,通过开发和验证有效结合深度学习和视觉系统的新方法,我们旨在创新与化妆相关的图像转换技术,为该领域的学术和实践进步做出贡献。为此,我们收集了适合每张图像的参考图像,针对每个年龄组实施图像优化,输入数据反映了研究人员的图像,在去除分辨率低或光线条件差的图像后,对人脸进行了对齐和大小调整。对 BeautyGAN 模型进行性能评估的结果证实,现有图像的识别率为 51.26%,接近 BeautyGAN 图像的 38.89%。根据这些结果判断,从学术角度看,可以提供反映用户喜好的定制化化妆风格建议或调整化妆效果;从实用角度看,可以更准确、更快速地建议适合顾客特点的化妆风格,从而提高定制化美容服务的质量。
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