FaceNet - 年龄差异面部数字图像框架

Chethana H.T., Trisiladevi C. Nagavi, Mahesha P., Vinayakumar Ravi, Gururaj H.L.
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引用次数: 0

摘要

自动人脸识别在法医学中起着至关重要的作用。刑事调查中最重要的证据是从犯罪现场捕捉到的面部图像,因为它们代表了涉案人员的身份。执法机构的职责就是从合适的数据库中识别面部图像。这些信息可作为执法机构的有力证据,成为全球反恐行动中最重要的证据。下巴和脸颊的轮廓、不同特征之间的距离和面部组件的形状是法医专家在人工面部识别过程中考虑的一些参数。这一过程非常耗时,是一项繁琐的工作。为了解决这个问题,有必要开发一个用于取证的自动人脸识别系统。因此,本研究工作讨论了 FaceNet--一个用于年龄变化面部数字图像的框架。实验在 CSA 数据集上进行了评估,该数据集有三种年龄变化,识别准确率为 86.8%,优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FaceNet – A Framework for Age Variation Facial Digital Images
Automated face recognition plays a vital role in forensics. The most important evidence in the criminal investigation is the facial images captured from the crime scene, as they represent the identity of the people involved in crime. The role of law enforcement agencies is to identify the facial images from the suitable database. This information can be treated as strong evidence for the law enforcement agencies which becomes the most important evidence in global counter-terrorism initiatives. Contour of chin and cheek, distancebetween different features and shapes of facial components are some of the parameters considered by the forensic experts for manual facial identification process. This process is time consuming, and it is a tedious job. To address this issue, there is a need for developing an automated face recognition system for forensics. As a result, FaceNet – a framework for age variation facial digital images is discussed in this research work. Experiments are evaluated on CSA dataset with three age variations which provides a recognition accuracy of86.8% and performs better than the existing algorithms.
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