CNN训练基于人脸照片的性别和年龄群体与相机预测

Kyoungson Jhang, Junsoo Cho
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引用次数: 10

摘要

CNN基于相机的年龄和性别预测似乎通常是用RGB彩色图像训练的。然而,在使用相机而不是图像文件进行测试的环境中,很难说用RGB彩色图像训练的CNN总是能产生良好的结果。通过实验,我们观察到在基于相机的测试中,使用灰度图像训练的CNN比使用RGB彩色图像训练的CNN具有更好的性别和年龄组预测准确率。
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CNN Training for Face Photo based Gender and Age Group Prediction with Camera
It appears that CNN for camera-based age and gender prediction is usually trained with RGB color images. However, it is difficult to say that CNN trained with RGB color images always produces good results in an environment where testing is performed with camera rather than with image files. With experiments, we observe that in camera-based testing CNN trained with grayscale images shows better gender and age group prediction accuracy than CNN trained with RGB color images.
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