Hierarchical differential image filters for skin analysis

Jingyi Zhang, P. Aarabi
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Abstract

In this paper we present a framework for analyzing skin parameters from portrait images and videos. Using a series of Hierarchical Differential Image Filters (HDIF), it becomes possible to detect different skin features such as wrinkles, spots, and roughness. These detected features are used to compute skin ratings that are compared to actual ratings by dermatologists. Analyzing a database of 49 images with ratings by a panel of dermatologists, the proposed HDIF method is able to detect skin roughness, dark spots, and deep wrinkles with an average rating error of 11.3%, 17.6%, and 15.6%, respectively, as compared to individual dermatologist rating errors of 8.2%, 7.4%, and 6.5%. Although dermatologist ratings are more accurate than the proposed HDIF method, the ratings are close enough that the HDIF ratings can be a viable solution where dermatologist ratings are not readily available.
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用于皮肤分析的分层差分图像滤波器
在本文中,我们提出了一个框架,从人像图像和视频分析皮肤参数。使用一系列的层次差分图像过滤器(HDIF),可以检测不同的皮肤特征,如皱纹、斑点和粗糙度。这些检测到的特征被用来计算皮肤评分,并与皮肤科医生的实际评分进行比较。分析了由皮肤科医生小组评分的49张图像的数据库,所提出的HDIF方法能够检测皮肤粗糙度,黑斑和深度皱纹,平均评分误差分别为11.3%,17.6%和15.6%,而单个皮肤科医生的评分误差分别为8.2%,7.4%和6.5%。虽然皮肤科医生的评分比建议的HDIF方法更准确,但这些评分足够接近,因此在皮肤科医生评分不容易获得的情况下,HDIF评分可以是一个可行的解决方案。
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