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Segmentation of Human Face Using Gradient-Based Approach

机译:基于梯度的人脸分割

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摘要

This paper describes a method for automatic segmentation of facial features such as eyebrows, eyes, nose, mouth and ears in colour images. This work is an initial step for wide range of applications based on feature-based approaches, such as face recognition, lip-reading, gender estimation, facial expression analysis, etc. Human face can be characterised by its skin colour and nearly elliptical shape. For this purpose, face detection is performed using colour and shape information. Uniform illumination is assumed. No restrictions on glasses, make-up, beard, etc. are imposed. Facial features are extracted using the vertically and horizontally oriented gradient projections. The gradient of a minimum with respect to its neighbour maxima gives the boundaries of a facial feature. Each facial feature has a different horizontal characteristic. These characteristics are derived by extensive experimentation with many face images. Using fuzzy set theory, the similarity between the candidate and the feature characteristic under consideration is calculated. Gradient-based method is accompanied by the anthropometrical information, for robustness. Ear detection is performed using contour-based shape descriptors. This method detects the facial features and circumscribes each facial feature with the smallest rectangle possible. AR database is used for testing. The developed method is also suitable for real-time systems.
机译:本文介绍了一种在彩色图像中自动分割眉毛,眼睛,鼻子,嘴巴和耳朵等面部特征的方法。这项工作是基于基于特征的方法(例如面部识别,嘴唇读取,性别估计,面部表情分析等)的广泛应用的第一步。人脸可以通过其肤色和近似椭圆形来表征。为此,使用颜色和形状信息执行面部检测。假设照明均匀。对眼镜,化妆品,胡须等没有任何限制。使用垂直和水平方向的梯度投影提取面部特征。相对于其最大值的最小值的梯度给出了面部特征的边界。每个面部特征都有不同的水平特征。这些特征是通过对许多面部图像进行大量实验得出的。使用模糊集理论,计算候选者与所考虑特征之间的相似度。基于梯度的方法带有人体测量学信息,以提高鲁棒性。使用基于轮廓的形状描述符执行耳朵检测。该方法检测面部特征,并用尽可能小的矩形限制每个面部特征。 AR数据库用于测试。所开发的方法也适用于实时系统。

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