Attributes and Simile Classifiers for Face Verification

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Presentation transcript:

Attributes and Simile Classifiers for Face Verification Recognition Class

Recognition using visual attributes Credit to Neeraj Kumar

Prior Approach Credit to Neeraj Kumar

Proposed Approach : Attribute Credit to Neeraj Kumar

Attribute Label Collection Amazon Mechanical Turk 125,000 Attribute Labels = $5,000 + 1 month

Learning an Attribute Classifier

Using Attributes to perform face verification

Attribute Classifiers At 1,000+ examples per attribute.

Describing faces using Similes

Training simile classifiers

Reference People

Face Regions

Using simile classifiers to perform face verification

Results Dataset : LFW Image-Restricted Benchmark 6,000 face pairs (3,000 same, 3,000 different) http://vis-www.cs.umass.edu/lfw/

Performance on LFW 85.29% accuracy

Human Verification The background act as strong cues for face verification.

PubFig Dataset http://www.cs.columbia.edu/CAVE/databases/pubfig/

Extension: Multi Attribute Search

Extension: Multi Attribute Search Relative Attribute, ICCV 2011

Relative Attribute

Question?