Bad Ai: Investigating the Effect of Half-Toning Techniques on Unwanted Face Detection Systems

S. Dadkhah, M. Köppen, S. Sadeghi, Kaori Yoshida
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引用次数: 3

Abstract

Currently, automatic face detection systems are widely used in various social media. The improvement of the automated intelligent face recognition can easily result in the invasion of the user 's privacy if the predefined functions for their so- called artificial intelligent systems are designed with no respect to the user privacy, this means that users do not get the right to prevent these types of automatic face detection. The problem does not stop here, and recently some organization attempted to use automated face recognition system as a digital personal judgment tools. For instance, judging if a person is criminal only based on the attributes of his/her face. In the present technology, spreading the personal information such as individual digital images are fast and inevitable. Thus, in this paper, some of the techniques to evade automatic face recognition is investigated. The focused of this article is to highlight the advantages of different Half-Toning algorithms concerning avoiding unwanted automated face detection/recognition. In the experimental phase, the result of varying filtering and modification algorithms compared to the proposed filtering technique.
研究半调色技术对无用人脸检测系统的影响
目前,自动人脸检测系统被广泛应用于各种社交媒体。自动智能人脸识别技术的提高,如果其所谓人工智能系统的预定义功能在设计时不考虑用户的隐私,就很容易造成对用户隐私的侵犯,这意味着用户没有权利阻止这些类型的自动人脸检测。问题还不止于此,最近一些组织试图使用自动人脸识别系统作为数字个人判断工具。例如,仅根据一个人的面部特征来判断他/她是否犯罪。在目前的技术条件下,个人数字图像等个人信息的传播是快速而不可避免的。因此,本文对一些逃避自动人脸识别的技术进行了研究。本文的重点是强调不同的半调和算法在避免不必要的自动人脸检测/识别方面的优势。在实验阶段,将不同滤波和修正算法的结果与所提出的滤波技术进行了比较。
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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