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Age Estimation Robust to Optical and Motion Blurring by Deep Residual CNN

机译:深度残差CNN对光学和运动模糊的年龄估计稳健

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Recently, real-time human age estimation based on facial images has been applied in various areas. Underneath this phenomenon lies an awareness that age estimation plays an important role in applying big data to target marketing for age groups, product demand surveys, consumer trend analysis, etc. However, in a real-world environment, various optical and motion blurring effects can occur. Such effects usually cause a problem in fully capturing facial features such as wrinkles, which are essential to age estimation, thereby degrading accuracy. Most of the previous studies on age estimation were conducted for input images almost free from blurring effect. To overcome this limitation, we propose the use of a deep ResNet-152 convolutional neural network for age estimation, which is robust to various optical and motion blurring effects of visible light camera sensors. We performed experiments with various optical and motion blurred images created from the park aging mind laboratory (PAL) and craniofacial longitudinal morphological face database (MORPH) databases, which are publicly available. According to the results, the proposed method exhibited better age estimation performance than the previous methods.
机译:近来,基于面部图像的实时人类年龄估计已经在各个领域中应用。在这种现象下,人们意识到年龄估计在将大数据应用于年龄组的目标市场营销,产品需求调查,消费者趋势分析等方面起着重要作用。但是,在现实环境中,各种光学和运动模糊效果会发生。这样的效果通常会在充分捕捉诸如皱纹之类的面部特征方面引起问题,这对于年龄估计是必不可少的,从而降低了准确性。以前的大多数年龄估计研究都是针对几乎没有模糊效果的输入图像进行的。为了克服此限制,我们建议使用深度ResNet-152卷积神经网络进行年龄估计,该方法对于可见光摄像头传感器的各种光学和运动模糊效果都非常可靠。我们对从公园老化心理实验室(PAL)和颅面纵向形态人脸数据库(MORPH)数据库创建的各种光学和运动模糊图像进行了实验,这些数据库可公开获得。根据结果​​,提出的方法显示出比以前的方法更好的年龄估计性能。

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