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A Study on an Automatic System for Analyzing the Facial Beauty of Young Women

机译:自动分析年轻女性面部表情的系统研究

摘要

A Study on an Automatic System for Analyzing the Facial Beauty of Young WomenududNeha SultanududBeauty is one of the foremost ideas that define human personality. However, only recently has the concept of beauty been scientifically analyzed. This has mostly been due to extensive research done in the area of face recognition and image processing on identification and classification of human features as contributing to facial beauty. Current research aims at precisely and conclusively understanding how humans classify a given individual's face as beautiful. Due to the lack of published theoretical standards and ground truths for human facial beauty, this is often an ambiguous process. Current methods of analysis and classification of human facial beauty rely mainly on the geometric aspects of human facial beauty. The classifiers used in current research include the k-nearest neighbor algorithm, ridge regression, and basic principal component analysis. ududIn this research, various approaches related to the comprehension and analysis of human beauty are presented and the use of these theories is outlined. Each set of theories is translated into a feature model that is tested for classification. Selecting the best set of features that result in the most accurate model for the representation of the human face is a key challenge. This research introduces the combined use of three main groups of features for classification of female facial beauty, to be used with classification through support vector machines. The classifier utilized is Support Vector Machine (SVM) and the accuracy obtained through this classifier is 86%. Current research in the field has produced algorithms with percentages of accuracy that are in the range of 75-85%. The approach used is one of analysis of the central tenets of beauty, the successive application of image processing techniques, and finally the usage of relevant machine learning methods to build an effective system for the automatic assessment of facial beauty. The ground truths used for verifying results are derived from ratings extracted from surveys conducted. udududThe proposed methodology involves a novel algorithm for the representation of facial beauty, which combines the use of geometric, textural, and shape based features for the analysis of facial beauty. This algorithm initially develops an overall landmark model of the entire human face. A significant advantage of this methodology is the accurate model of the human face which synthesizes the geometric, textural and shape-related aspects of the face. The landmark model is then used for extracting critical characteristics which are then used in a feature vector for training using machine learning. The features extracted help to represent facial characteristics in three major areas. Geometric features help to represent the symmetrical properties and ratio-based properties of landmarks on the face. Textural features extracted help capture information related to skin texture and composition. Finally, face shape and outline features help to categorize the overall shape of a given face, which helps to represent the given female face shape and outline for further analysis of any deviations from the basic face shapes. These features are then used in a classifier to appropriately categorize each image. The database used for the source of images contains images of female subjects from a variety of backgrounds and levels of attractiveness.
机译:研究分析年轻女性面部美感的自动系统 ud udNeha Sultan ud udBeauty是定义人格的最重要思想之一。但是,直到最近才对美的概念进行科学分析。这主要是由于在面部识别和图像处理领域进行了大量研究,以识别和分类有助于面部美容的人类特征。当前的研究旨在准确而最终地理解人类如何将给定个体的面孔分类为美丽。由于缺乏公开的理论基础和人类面部美容的基本事实,这通常是一个模棱两可的过程。当前的人类面部美容的分析和分类方法主要依赖于人类面部美容的几何方面。当前研究中使用的分类器包括k最近邻算法,岭回归和基本主成分分析。 ud ud在这项研究中,提出了与人类美感理解和分析有关的各种方法,并概述了这些理论的使用。每套理论都转换为经过分类测试的特征模型。选择最合适的特征集以产生最精确的人脸表示模型是一项关键挑战。这项研究介绍了将三大类特征组合用于女性面部美容的分类,并通过支持向量机进行分类。使用的分类器是支持向量机(SVM),通过该分类器获得的准确性为86%。该领域的当前研究已经产生了精度百分比在75-85%范围内的算法。所使用的方法是分析美容的中心原则,图像处理技术的连续应用以及最终使用相关的机器学习方法来构建有效的面部美容自动评估系统之一。用于验证结果的基本事实是从进行的调查中提取的评级得出的。 ud ud ud所提出的方法涉及一种用于面部表情表示的新颖算法,该算法结合了基于几何,纹理和基于形状的特征的使用来分析面部表情。该算法最初会开发出整个人脸的整体界标模型。这种方法的一个显着优势是精确的人脸模型,可以合成人脸的几何,纹理和形状相关方面。然后,将地标模型用于提取关键特征,然后将其用于特征向量中,以使用机器学习进行训练。提取的特征有助于代表三个主要方面的面部特征。几何特征有助于表示脸部地标的对称属性和基于比率的属性。提取的纹理特征有助于捕获与皮肤纹理和成分有关的信息。最后,面部形状和轮廓特征有助于对给定面部的整体形状进行分类,这有助于表示给定的女性面部形状和轮廓,以进一步分析与基本面部形状的任何偏差。然后,将这些功能用于分类器中以对每个图像进行适当分类。用于图像来源的数据库包含来自各种背景和吸引力水平的女性对象的图像。

著录项

  • 作者

    SULTAN NEHA;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类
  • 入库时间 2022-08-20 20:21:45

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