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Face Gender Recognition using Multi Layer Perceptron with OTSU Segmentation

机译:使用多层Perceptron与OTSU分段进行性别识别

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Face Gender recognition has been a swiftly enhancing and interesting area which is of high challenge and significance in real-time applications of image processing. There are lot of open opportunities in person identification such as posture, clothing, hair, voice and gait; but none are as compelling as face recognition. Face gender recognition is significantly an efficient cognitive process and there is definitely a need of robust methods for efficient categorization of male and female subjects. In the paper here, OTSU segmentation has been applied for the feature extraction on subset of 780 images from Faces 94 dataset and Multi Layer Perceptron (MLP) network is further employed to investigate the local minima and global maxima of Face Gender Recognition accuracy with multiple considered hidden layers. The experimentation has resulted in getting higher face gender recognition accuracy as 99.658% with fifteen hidden layers of MLP.
机译:面对性别认可一直是一种迅速增强和有趣的地区,在图像处理的实时应用中具有高挑战性和意义。人员身份识别有很多开放机会,如姿势,衣服,头发,声音和步态;但没有人像面部识别一样引人注目。面对性别识别是显着的高效认知过程,绝对需要有效地分类男性和女性受试者的鲁棒方法。本文在此处,OTSU分割已经应用于来自面部94数据集的780个图像子集的特征提取,并且进一步采用多层的Perceptron(MLP)网络来研究局部最小值和全球最大值的面部性别识别准确性与多个考虑的隐藏层。实验导致较高的性别识别准确性为99.658%,MLP的十五层隐藏层。

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