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Real-time gender recognition based on eigen-features selection from facial images

机译:基于面部图像特征选择的实时性别识别

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This paper proposed a novel image processing method combining Principal Component Analysis (PCA) and Genetic Algorithm (GA) to reduce the interference of facial expression, lighting or wear but extracting gender feature from frontal face. The collected facial images are first cropped and aligned automatically, then the gray-level information can be converted to feature vectors via PCA. After eigen-features are extracted with high classification performance by the aid of GA, the neural network classifier can be trained accordingly. Compared to the classification methods based on global gray-level information, the obtained classifier has better identification rate but half less used feature dimension, so the calculation load can substantially be reduced during training and identification procedures, which benefits to the development of a real-time identification system. Furthermore, FERET dataset and FEI dataset are used to validate the generality of the proposed method, where 92% and 94% accuracy rates of the gender recognition can be achieved respectively.
机译:本文提出了一种结合主成分分析(PCA)和遗传算法(GA)的图像处理新方法,以减少面部表情,光线或衣服的干扰,同时从额脸提取性别特征。收集的面部图像首先被裁剪并自动对齐,然后可以通过PCA将灰度级信息转换为特征向量。在借助遗传算法以高分类性能提取特征特征之后,可以对神经网络分类器进行相应的训练。与基于全局灰度信息的分类方法相比,所获得的分类器具有更高的识别率,但使用的特征维却减少了一半,因此在训练和识别过程中可以大大减少计算量,这有利于开发一种真正的分类器。时间识别系统。此外,使用FERET数据集和FEI数据集来验证该方法的通用性,可以分别实现92%和94%的性别识别准确率。

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