跨年龄人脸检索的深度特征选择与投影

Kaihua Tang, Xiao-Nan Hou, Zhiwen Shao, Lizhuang Ma
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引用次数: 3

摘要

虽然传统的PIE(姿势、光照和表情)面部变化已经被最新的方法很好地解决了,但一种新的面部变化——跨年龄变化正在引起研究者的注意。大多数现有的方法在实际应用中都不能保持其有效性,因为实际应用中存在明显的年龄差距。跨年龄变异是人随着年龄的增长,面部的形状变形和纹理变化所引起的。这将导致人脸特征的巨大的个人内部变化,从而降低算法的性能。提出了一种基于深度特征的人脸检索框架。我们的框架使用深度cnn特征描述符和两种精心设计的后处理方法来实现年龄不变性。据我们所知,这是第一个基于深度特征的跨年龄人脸检索方法。我们使用的深度cnn模型首先在传统的PIE数据集上进行训练,然后通过跨年龄数据集进行微调。我们提出的特征选择和投影后处理在消除深度cnn特征的跨年龄变化方面也被证明是非常有效的。跨年龄名人数据集(CACD)是包含跨年龄变化的最大公共数据集,在该数据集上进行的实验表明,我们的框架优于以前最先进的方法。
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Deep feature selection and projection for cross-age face retrieval
While traditional PIE (pose, illumination and expression) face variations have been well settled by latest methods, a new kind of variation, cross-age variation, is drawing attention from researchers. Most of the existing methods fail to maintain the effectiveness in real world applications that contain significant gap of age. Cross-age variation is caused by the shape deformation and texture changing of human faces while people getting old. It will result in tremendous intra-personal changes of face feature that deteriorate the performance of algorithms. This paper proposed a deep feature based framework for face retrieval problem. Our framework uses deep CNNs feature descriptor and two well designed post-processing methods to achieve age-invariance. To the best of our knowledge, this is the first deep feature based method in cross-age face retrieval problem. The deep CNNs model we use is firstly trained on traditional PIE datasets and then fine-tuned by cross-age dataset. The feature selection and projection post-processing we propose is also proved to be very effective in eliminating cross-age variation of deep CNNs feature. The experiments conducted on Cross-Age Celebrity Dataset (CACD), which is the largest public dataset containing cross-age variation, show that our framework outperforms previous state-of-the-art methods.
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