基于机器学习的个性化护肤品推荐引擎

Hsiao-Hui Li, Yuan-Hsun Liao, Yennun Huang, Po-Jen Cheng
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引用次数: 4

摘要

随着经济的发展和老龄化趋势,化妆品的使用范围迅速扩大。在不断扩大的护肤市场中,面部护肤品是护肤品中最受欢迎的产品。然而,市场上有成千上万的护肤品可供选择。面对无穷无尽的选择,购物者感到困惑和疲惫。因为每个人的皮肤状况不一样,使用不合适的护肤品会对皮肤造成伤害。脸部皮肤的常见问题是皱纹、斑点、寻常痤疮、毛孔等。造成面部皱纹的原因,如干燥、面部表情、衰老等,会造成不同深浅和不同类型的皱纹。因此,了解自己的肤质,正确使用护肤品是非常重要的。根据应用的不同层次的图像处理,可分为图像视觉领域中的图像分类、定位、目标检测和目标分割。本文将重点研究机器学习和深度学习算法在人脸和皮肤智能推荐平台上的应用。该算法利用YOLOv4的新目标识别算法检测人脸图像中的关键特征,截取感兴趣区域(ROI)的子图像作为多标签模型的输入信息。每个子图像通过第二层的YOLOv4标识符检测缺陷部分,并计算局部块的像素面积与主体的比值,评估特征部分之间的相关性和程度,为后续多标签模型的优化建立参考。皮肤状况分类采用图像处理算法进行预处理,自动去除、降噪、增强、归一化和提取特征,获得子图像的特征向量,用于训练多标签分类模型。机器学习的预测结果可以为用户提供合适的保养知识和产品推荐,为用户推荐适合自己皮肤状况的护肤品和保养成分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Based on machine learning for personalized skin care products recommendation engine
With the economic development and the aging trend, the use of cosmetic products has expanded rapidly. In an ever-expanding skin care market, facial skin care product was the most popular product of skin care product. However, thousands of skin care products are available in the market. With endless options, shoppers are confronted confused and tired. Because everyone's skin condition is not the same, using unsuitable skin care products can damage the skin. Frequent problems with face skin are wrinkles, spots, acne vulgaris, pores, etc. The causes of facial lines, such as dryness, facial expressions, aging, etc., are cause different shades and different types of wrinkles. Therefore, it is very important to know your skin quality and use skin care products correctly. According to the application of different levels of image processing, it can be divided into image classification, positioning, object detection and object segmentation in the field of image vision. This paper will focus on the application of machine learning and deep learning algorithm development on human face and skin intelligence recommendation platform. That uses YOLOv4's novel object recognition algorithm to detect key features in face images, and intercept sub-images of regions of interest (ROI) as input information for multi-label models. Each sub-image detects the defective part through the YOLOv4 identifier of the second layer, and calculates the ratio of the pixel area of the local block to the main body to evaluate the correlation between feature parts and degree to establish a reference for the optimization of subsequent multi-label model. The skin condition classification uses the image processing algorithm to preprocess automatically remove, reduce noise, enhance, normalize and extract features to obtain the feature vectors of the sub-images for training the multi-label classification model. The prediction results of machine learning can provide suitable maintenance knowledge and product recommendations for users to recommend the suitable skin care products and maintenance ingredients for the user's skin condition.
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