Search Results for author: Michael C. King

Found 12 papers, 2 papers with code

Impact of Blur and Resolution on Demographic Disparities in 1-to-Many Facial Identification

no code implementations8 Sep 2023 Aman Bhatta, Gabriella Pangelinan, Michael C. King, Kevin W. Bowyer

This paper analyzes the accuracy of 1-to-many facial identification across demographic groups, and in the presence of blur and reduced resolution in the probe image as might occur in "surveillance camera quality" images.

Face Recognition

Analysis of Adversarial Image Manipulations

no code implementations10 May 2023 Ahsi Lo, Gabriella Pangelinan, Michael C. King

As virtual and physical identity grow increasingly intertwined, the importance of privacy and security in the online sphere becomes paramount.

Image Manipulation

Consistency and Accuracy of CelebA Attribute Values

1 code implementation13 Oct 2022 Haiyu Wu, Grace Bezold, Manuel Günther, Terrance Boult, Michael C. King, Kevin W. Bowyer

Two annotators independently assigning attribute values shows that only 12 of 40 common attributes are assigned values with >= 95% consistency, and three (high cheekbones, pointed nose, oval face) have essentially random consistency.

Attribute Facial Attribute Classification

The Gender Gap in Face Recognition Accuracy Is a Hairy Problem

no code implementations10 Jun 2022 Aman Bhatta, Vítor Albiero, Kevin W. Bowyer, Michael C. King

We then demonstrate that when the data used to estimate recognition accuracy is balanced across gender for how hairstyles occlude the face, the initially observed gender gap in accuracy largely disappears.

Attribute Face Recognition

Face Recognition Accuracy Across Demographics: Shining a Light Into the Problem

3 code implementations4 Jun 2022 Haiyu Wu, Vítor Albiero, K. S. Krishnapriya, Michael C. King, Kevin W. Bowyer

This is the first work that we are aware of to explore how the level of brightness of the skin region in a pair of face images (rather than a single image) impacts face recognition accuracy, and to evaluate this as a systematic factor causing unequal accuracy across demographics.

Unsupervised face recognition

Gendered Differences in Face Recognition Accuracy Explained by Hairstyles, Makeup, and Facial Morphology

no code implementations29 Dec 2021 Vítor Albiero, Kai Zhang, Michael C. King, Kevin W. Bowyer

There is consensus in the research literature that face recognition accuracy is lower for females, who often have both a higher false match rate and a higher false non-match rate.

Face Recognition

Does Face Recognition Error Echo Gender Classification Error?

no code implementations28 Apr 2021 Ying Qiu, Vítor Albiero, Michael C. King, Kevin W. Bowyer

For impostor image pairs, our results show that pairs in which one image has a gender classification error have a better impostor distribution than pairs in which both images have correct gender classification, and so are less likely to generate a false match error.

Classification Face Recognition +2

Analysis of Gender Inequality In Face Recognition Accuracy

no code implementations31 Jan 2020 Vítor Albiero, Krishnapriya K. S., Kushal Vangara, Kai Zhang, Michael C. King, Kevin W. Bowyer

We show that the female genuine distribution improves when only female images without facial cosmetics are used, but that the female impostor distribution also degrades at the same time.

Face Recognition

Does Face Recognition Accuracy Get Better With Age? Deep Face Matchers Say No

no code implementations14 Nov 2019 Vítor Albiero, Kevin W. Bowyer, Kushal Vangara, Michael C. King

In contrast, a pre deep learning matcher on the same dataset shows the traditional result of higher accuracy for older persons, although its overall accuracy is much lower than that of the deep learning matchers.

Face Recognition

Characterizing the Variability in Face Recognition Accuracy Relative to Race

no code implementations15 Apr 2019 KS Krishnapriya, Kushal Vangara, Michael C. King, Vitor Albiero, Kevin Bowyer

For a fixed decision threshold, the African-American image cohort has a higher false match rate and a lower false non-match rate.

Face Recognition MORPH

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