Difference between revisions of "DeepFace (dataset)"

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==Description==
 
==Description==
<blockquote>It was not until the breakthrough of Alexnet in 2012, and the subsequent introduction of the DeepFace model in 2014, that the use of neural networks became a mainstream method for facial recognition development. DeepFace, the first facial recognition model trained with deep learning, was also the first instance of a facial recognition model approaching human performance on a task. Deepface was developed by researchers at Facebook, Inc. and trained on an internal dataset composed of images from Facebook profile images; at the time, it was purportedly “the largest facial dataset to-date, an identity labeled dataset of [[Has images::4 million|4 million]] facial images belonging to more than [[Has individuals::4,000|4,000]] identities” (Taigman et al. 2014).The impact of deep learning techniques on face recognition and its adjacent problems was dramatic; the DeepFace model achieved a 97.35% accuracy on the Labeled Faces in the Wild (LfW) test set, reducing the previous state of the art’s error by 27%. [[CiteRef::rajiFaceSurveyFacial2021]]</blockquote>
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<blockquote>It was not until the breakthrough of Alexnet in 2012, and the subsequent introduction of the DeepFace model in 2014, that the use of neural networks became a mainstream method for facial recognition development. DeepFace, the first facial recognition model trained with deep learning, was also the first instance of a facial recognition model approaching human performance on a task. Deepface was developed by researchers at Facebook, Inc. and trained on an internal dataset composed of images from Facebook profile images; at the time, it was purportedly “the largest facial dataset to-date, an identity labeled dataset of [[Has images::4000000|4 million]] facial images belonging to more than [[Has individuals::4,000|4,000]] identities” (Taigman et al. 2014).The impact of deep learning techniques on face recognition and its adjacent problems was dramatic; the DeepFace model achieved a 97.35% accuracy on the Labeled Faces in the Wild (LfW) test set, reducing the previous state of the art’s error by 27%. [[CiteRef::rajiFaceSurveyFacial2021]]</blockquote>

Revision as of 08:46, 27 February 2021

DeepFace (dataset)
"Global" Information Certainty
Events
Dataset Category Facial Recognition
URL
Keywords
Related Technology DeepFace
Owning institution
Custodian institution
Custodian institution
has funding
has images
has individuals
runs database software
runs search software
Dataset full name
Dataset Category
Country



Technical information:

Full name
Country
ContentsFacial Images
Images4,000,000
Individuals4,000
Runs database software
URL"URL" is a type and predefined property provided by Semantic MediaWiki to represent URI/URL values.https://pypi.org/project/deepface/
Related Technology

Developers and Users:

Developed byFacebook
Owning institution
Custodian institution

Description[edit | ]

It was not until the breakthrough of Alexnet in 2012, and the subsequent introduction of the DeepFace model in 2014, that the use of neural networks became a mainstream method for facial recognition development. DeepFace, the first facial recognition model trained with deep learning, was also the first instance of a facial recognition model approaching human performance on a task. Deepface was developed by researchers at Facebook, Inc. and trained on an internal dataset composed of images from Facebook profile images; at the time, it was purportedly “the largest facial dataset to-date, an identity labeled dataset of 4 million facial images belonging to more than 4,000 identities” (Taigman et al. 2014).The impact of deep learning techniques on face recognition and its adjacent problems was dramatic; the DeepFace model achieved a 97.35% accuracy on the Labeled Faces in the Wild (LfW) test set, reducing the previous state of the art’s error by 27%. 1

References

  1. ^  Raji, Inioluwa Deborah and Fried, Genevieve. About Face: A Survey of Facial Recognition Evaluation. , 2021.