Study Of AI Generated And Real Face Perception

Gulzhan Yegemberdiyeva, B. Amirgaliyev
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引用次数: 3

Abstract

The face is the most informative sign in a people's recognition. The face contains such features as identity, gender, race, mood, attention and emotions. Face recognition is critical for some services, while recent research shows that people recognition can be very different from person to person.In the past few years, a new type of algorithm Generative Adversarial Network (GAN) has appeared that allows you to generate artificial faces that are identical to real faces. This algorithm is currently widely used in the generation of new faces for marketing campaigns, video processing, increasing the resolution of images, as well as in entertainment applications.This study focuses on the effectiveness of recognizing, distinguishing and memorizing real and fake faces. In the introduction, a literature review is presented. It covers issues of decision-making by people, face recognition, and factors affecting the memorization of faces. The second part contains a description of research methodology - data collection, research design, concerns the work (collection, analysis) with data and procedures. Further hypotheses are put forward and the analysis and conclusion are given.
人工智能生成与真实人脸感知的研究
在一个人的识别中,脸是最有信息量的标志。人脸包含身份、性别、种族、情绪、注意力和情绪等特征。人脸识别在某些服务中至关重要,而最近的研究表明,人与人之间的人识别能力可能会有很大差异。在过去的几年里,一种新型的算法生成对抗网络(GAN)出现了,它可以让你生成与真实面孔相同的人造面孔。该算法目前广泛应用于营销活动的新面孔生成、视频处理、提高图像分辨率以及娱乐应用中。本研究的重点是识别、区分和记忆真假面孔的有效性。在引言部分,对文献进行了综述。它涵盖了人的决策、人脸识别和影响人脸记忆的因素。第二部分包含研究方法的描述-数据收集,研究设计,关注工作(收集,分析)与数据和程序。提出了进一步的假设,并进行了分析和结论。
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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