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Implementation of Gabor Filters Combined with Binary Features for Gender Recognition

机译:结合二进制特征的Gabor滤波器实现性别识别

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The human face is an important biometric Includes a great deal of useful information, such as gender, age, race and identity.Gender classification is very convenient for humans,but for a computer this is a challenge. Recently, gender classification from face images is of great interest.Gender detection can be useful for human-computer interaction, Such as the designation of individuals.Several algorithms have been designed for this purpose and the proportion of each of these issues has been resolved, our proposed method is based on Gabor filters and Local Binary Patterns (LBP), which extract facial features that these characteristics are robust against interference. In order to achieve an appropriate classification, we used self-organizing neural networks, in this neural network weights are extracted for each gender with little error.The results are compared with existing data sets that this comparison will prove the superiority of the proposed method.
机译:人脸是重要的生物特征,包括大量有用信息,例如性别,年龄,种族和身份。性别分类对于人类来说非常方便,但是对于计算机而言,这是一个挑战。近年来,从面部图像进行性别分类备受关注,性别检测可用于人机交互,例如个人的指定。为此目的设计了几种算法,并且解决了每个问题的比例,我们提出的方法基于Gabor滤波器和局部二值模式(LBP),它们提取出了这些特征对干扰具有鲁棒性的面部特征。为了实现适当的分类,我们使用了自组织神经网络,在该神经网络中提取每个性别的权重而几乎没有错误。将结果与现有数据集进行比较,这种比较将证明该方法的优越性。

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