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Learning Face Representation from Scratch

About

Pushing by big data and deep convolutional neural network (CNN), the performance of face recognition is becoming comparable to human. Using private large scale training datasets, several groups achieve very high performance on LFW, i.e., 97% to 99%. While there are many open source implementations of CNN, none of large scale face dataset is publicly available. The current situation in the field of face recognition is that data is more important than algorithm. To solve this problem, this paper proposes a semi-automatical way to collect face images from Internet and builds a large scale dataset containing about 10,000 subjects and 500,000 images, called CASIAWebFace. Based on the database, we use a 11-layer CNN to learn discriminative representation and obtain state-of-theart accuracy on LFW and YTF. The publication of CASIAWebFace will attract more research groups entering this field and accelerate the development of face recognition in the wild.

Dong Yi, Zhen Lei, Shengcai Liao, Stan Z. Li• 2014

Related benchmarks

TaskDatasetResultRank
Face VerificationLFW
Mean Accuracy99.55
339
Face VerificationAgeDB-30
Accuracy94.55
204
Face VerificationIJB-C
TAR @ FAR=0.01%96.05
173
Face VerificationLFW (test)
Verification Accuracy97.73
160
Face VerificationCFP-FP
Accuracy95.31
127
Face VerificationCA-LFW
Accuracy93.78
64
Face VerificationLFW (Labeled Faces in the Wild) unrestricted-labeled-outside-data protocol 14
Accuracy97.73
47
Face VerificationYouTube Face (YTF) 40 (10-fold cross-validation)
Accuracy92.24
23
Face VerificationLFW unrestricted with labeled outside data 9
Accuracy97.73
16
Face VerificationYTF unrestricted with labeled outside data 35
Accuracy92.2
12
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