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Convolutional neural network for age classification from smart-phone based ocular images

机译:卷积神经网络用于基于智能手机的眼睛图像的年龄分类

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Automated age classification has drawn significant interest in numerous applications such as marketing, forensics, human-computer interaction, and age simulation. A number of studies have demonstrated that age can be automatically deduced from face images. However, few studies have explored the possibility of computational estimation of age information from other modalities such as fingerprint or ocular region. The main challenge in age classification is that age progression is person-specific which depends on many factors such as genetics, health conditions, life style, and stress level. In this paper, we investigate age classification from ocular images acquired using smart-phones. Age information, though not unique to the individual, can be combined along with ocular recognition system to improve authentication accuracy or invariance to the ageing effect. To this end, we propose a convolutional neural network (CNN) architecture for the task. We evaluate our proposed CNN model on the ocular crops of the recent large-scale Adience benchmark for gender and age classification captured using smart-phones. The obtained results establish a baseline for deep learning approaches for age classification from ocular images captured by smart-phones.
机译:自动化的年龄分类已引起许多应用的极大兴趣,例如市场营销,取证,人机交互和年龄模拟。大量研究表明,可以从面部图像自动推断年龄。但是,很少有研究探索从其他方式(例如指纹或眼部区域)对年龄信息进行计算估计的可能性。年龄分类的主要挑战是年龄的发展是特定于个人的,这取决于许多因素,例如遗传,健康状况,生活方式和压力水平。在本文中,我们从使用智能手机获取的眼图上调查了年龄分类。年龄信息虽然不是个人独有的,但可以与眼睛识别系统结合使用,以提高身份验证的准确性或对衰老效果的不变性。为此,我们针对该任务提出了卷积神经网络(CNN)体系结构。我们对使用智能手机捕获的性别和年龄分类的最新大型Adience基准的眼球作物评估了我们提出的CNN模型。获得的结果为通过智能手机捕获的眼图图像进行年龄分类的深度学习方法建立了基线。

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