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FRVT 2006: Quo Vadis face quality

机译:FRVTTI 2006 Quo Vadis面部质量

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A study is presented showing how three state-of-the-art algorithms from the Face Recognition Vendor Test 2006 (FRVT 2006) are effected by factors related to face images and people. The recognition scenario compares highly controlled images to images taken of people as they stand before a camera in settings such as hallways and outdoors in front of buildings. A Generalized Linear Mixed Model (GLMM) is used to estimate the probability an algorithm successfully verifies a person conditioned upon the factors included in the study. The factors associated with people are: Gender, Race, Age and whether they wear Glasses. The factors associated with images are: the size of the face, edge density and region density. The setting, indoors versus outdoors, is also a factor. Edge density can change the estimated probability of verification dramatically, for example from about 0.15 to 0.85. However, this effect is not consistent across algorithm or setting. This finding shows that simple measurable factors are capable of characterizing face quality; however, these factors typically interact with both algorithm and setting.
机译:提出了一项研究,该研究表明人脸识别供应商测试2006(FRVT 2006)中的三种最新算法如何受到与人脸图像和人有关的因素的影响。识别方案将高度受控的图像与人们站在摄像机前在走廊和建筑物前室外等环境中所拍摄的图像进行比较。广义线性混合模型(GLMM)用于估计算法成功验证人的概率,该条件取决于研究中包含的因素。与人相关的因素包括:性别,种族,年龄以及是否戴眼镜。与图像相关的因素包括:面部尺寸,边缘密度和区域密度。室内设置还是室外设置也是一个因素。边缘密度可以极大地改变估计的验证概率,例如从大约0.15到0.85。但是,这种效果在算法或设置中并不一致。这一发现表明,简单的可测量因素能够表征人脸质量。但是,这些因素通常与算法和设置都相互作用。

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