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Face verification of age separated images under the influence of internal and external factors

机译:受内部和外部因素影响的年龄分离图像的面部验证

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In this paper we study the task of face verification of age-separated images with the presence of various internal and external factors. We propose a hierarchical local binary pattern (HLBP) feature descriptor for robust face representation across age. The effective representation by HLBP across minimal age, illumination, and expression variations combined with its hierarchical computation provides a discriminative representation of the face image. The proposed face descriptor is combined with an AdaBoost classification framework to model the face verification task as a two-class problem. Experimental results on the FG-NET and MORPH aging datasets indicate that the performance of the proposed framework is robust with respect to images of both adults and children. A detailed empirical analysis on the effects of internal (age gap, gender, and ethnicity) and external (pose, expressions, facial hair, and glasses) factors in the face verification performance is also studied. The results indicate that the verification accuracy reduces as the age gap between the image pair increases. A quantitative comparison on the effects of gender on verification performance by both humans and the proposed machine learning approach is provided. The analysis indicate that the cues aid humans in verifying image pairs with large age gaps, while it aids machines for all age gaps. However, the cues mislead humans in the case of images of children and extra-personal pairs with large age gaps. Our analyses indicate that the pose and expression variations affect the performance, despite training with such variations, while facial hair and glasses act as discriminative cues. A study on the effects of ethnicity indicate that non-linear algorithms have insignificant effect in performance with the use of both generalized and individual ethnicity models when compared with linear algorithms.
机译:在本文中,我们研究在存在各种内部和外部因素的情况下对年龄分离图像进行面部验证的任务。我们提出了一种分层的本地二进制模式(HLBP)特征描述符,用于跨年龄的鲁棒面部表示。 HLBP在最小年龄,照度和表情变化范围内的有效表示及其分层计算提供了面部图像的可区分表示。拟议的人脸描述符与AdaBoost分类框架相结合,将人脸验证任务建模为两类问题。在FG-NET和MORPH老化数据集上的实验结果表明,相对于成人和儿童的图像,所提出框架的性能均十分可靠。还对内部(年龄差距,性别和种族)和外部(姿势,表情,面部毛发和眼镜)因素对面部验证性能的影响进行了详细的实证分析。结果表明,验证精度随着图像对之间年龄差距的增加而降低。提供了性别对人类和拟议的机器学习方法对验证性能的影响的定量比较。分析表明,提示可以帮助人们验证年龄差距较大的图像对,同时可以帮助机器解决所有年龄差距。但是,在具有较大年龄差距的儿童和超人配对的图像中,提示会误导人类。我们的分析表明,姿势和表情的变化会影响性能,尽管经过训练后仍会受到影响,而面部毛发和眼镜则是判别线索。对种族影响的研究表明,与线性算法相比,使用广义种族模型和个体种族模型,非线性算法对性能的影响均很小。

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