促进时尚迷彩艺术

Ranran Feng, B. Prabhakaran
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引用次数: 24

摘要

艺术家和时装设计师最近创造了一种新的艺术形式——伪装艺术——可以用来防止计算机视觉算法检测人脸。这种数字艺术技术结合了化妆和头发造型,或其他修改,如面部绘画,以帮助避免自动面部检测。本文首先研究了伪装干扰及其对当前几种人脸检测/识别技术的影响;然后提出一个工具,可以促进这种伪装的数字艺术设计,可以欺骗这些计算机视觉算法。该工具可以从人脸图像中找出构成被识别人脸的突出或决定性特征;并对特定面部特征或面部部位的伪装选项(化妆,造型,油漆)提出建议。对该工具的测试表明,它可以有效地帮助艺术家或设计师创造挫败伪装的设计。通过8种不同的人脸识别系统(非商业或商业)对40名名人的建议伪装进行评估,结果显示,使用建议的伪装,受试者有82.5% ~ 100%无法识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facilitating fashion camouflage art
Artists and fashion designers have recently been creating a new form of art -- Camouflage Art -- which can be used to prevent computer vision algorithms from detecting faces. This digital art technique combines makeup and hair styling, or other modifications such as facial painting to help avoid automatic face-detection. In this paper, we first study the camouflage interference and its effectiveness on several current state of art techniques in face detection/recognition; and then present a tool that can facilitate digital art design for such camouflage that can fool these computer vision algorithms. This tool can find the prominent or decisive features from facial images that constitute the face being recognized; and give suggestions for camouflage options (makeup, styling, paints) on particular facial features or facial parts. Testing of this tool shows that it can effectively aid the artists or designers in creating camouflage-thwarting designs. The evaluation on suggested camouflages applied on 40 celebrities across eight different face recognition systems (both non-commercial or commercial) shows that 82.5% ~ 100% of times the subject is unrecognizable using the suggested camouflage.
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