Identity Verification Using Age Progression & Machine Learning

Shweta Taneja, Sanchit Gupta, Ashwani Jaiswal, Dhruva Bansal, A. Bansal
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引用次数: 0

Abstract

Facial age progression is the process of synthesizing a face image at an older age based on images showing a person at a younger age. The ability to generate accurate age progressed face images is important for a number of forensic investigation tasks. In this paper we analyze the performance of a number of publicly available age progression applications, with respect to different parameters encountered in age progression including imaging conditions of input images, presence of occluding structures, age of input/target faces, and age progression range. Through the examination and measurement of old enough movement precision within the sight of various conditions, we remove various ends that appear as a bunch of rules identified with factors that criminological craftsmen and age movement scientists should concentrate to deliver improved age movement techniques. Trial results utilizing an information base consisting of sets of face pictures that were recovered from the FGNET dataset. The check framework for faces isolated by as many AI calculations, accomplishes an equivalent exactness pace of 80%.
使用年龄进展和机器学习的身份验证
面部年龄递进是根据一个人年轻时的面部图像合成一个老年人的面部图像的过程。生成准确的年龄进展面部图像的能力对于许多法医调查任务都很重要。在本文中,我们分析了一些公开可用的年龄递进应用程序的性能,涉及年龄递进中遇到的不同参数,包括输入图像的成像条件、遮挡结构的存在、输入/目标面部的年龄以及年龄递进范围。通过在各种条件下对足够老的运动精度的检验和测量,我们去除了看起来像一堆规则的各种目的,这些规则与犯罪学工匠和年龄运动科学家应该集中的因素一致,以提供改进的年龄运动技术。试验结果利用了一个信息库,该信息库由从FGNET数据集中恢复的几组人脸图片组成。通过同样多的人工智能计算,人脸检测框架的准确率达到80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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