卷积神经网络在人脸性别识别中面部各部分重要性的比较研究

Rahma Amri, A. Gazdar, W. Barhoumi
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引用次数: 1

摘要

如今,性别识别系统在安防、人机交互、监控和定向广告等领域发挥着非常重要的作用。然而,许多因素,如化妆和伪装,会影响识别和延长处理时间。我们的研究围绕这个问题展开。这是一项通过卷积神经网络(CNN)对面部各部位(眼睛、嘴巴、鼻子)在性别面部识别中的重要性进行对比实验研究。作为第一步,我们的目标是找到面部最关键的部分,以确定性别识别中最重要的部分。使用的方法在UTKFace数据集上进行了测试,初步结果证实眼睛包含有关性别识别的最具歧视性的信息。我们对眼睛、嘴巴和鼻子的分类准确率分别达到了92%、91%和89%。然后,我们提出了第二项研究,通过只使用眼睛来训练系统,以确定眼睛对男女的重要性程度。我们对男性眼睛和女性眼睛的分类准确率分别达到了99%和99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative study on the importance of each face part in facial gender recognition via convolutional neural networks
Nowadays, gender recognition systems are very important in several fields such as security, human machine interaction, surveillance and targeted advertising. However, many factors, such as makeup and disguise, can affect recognition and extend the processing time. Our research revolves around this issue. This is a comparative experimental study of the significance of each part of the face (eyes, mouth, nose) in the gender facial recognition via convolutional neural networks (CNN). As a first step our goal is to find the most crucial part of the face in order to determine the most important part in the gender recognition. The used method was tested on the UTKFace dataset and the preliminary results confirm that the eyes contain the most discriminating information regarding gender identification. We achieve a classification accuracy of 92% for eyes, 91% for mouth and 89% for nose. Then we propose a second study on the degree of importance of the eyes for both genders by training the system using only eyes. We achieve a classification accuracy of 99% for eyes of men and 99% for eyes of women.
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