Aureus 3D facial recognition software is highly efficient at finding and matching faces. CyberExtruder provides access to the best facial recognition testing information possible. To that end, test results from well-known, publicly-available, industry standard data sets including NIST’s FERET and FRGC and UMass LFW data set are shown below. If you would like to independently verify our results, we’ll provide you with the Aureus 3D SDK and guide you through the testing process.
The foundation of your facial recognition solution is Aureus 3D.
In NIST’s FRVT 2002 report, NIST affirmed CyberExtruder’s approach to facial recognition by stating “FRVT 2002 also assessed the impact of three new techniques for improving facial recognition: three-dimensional morphable models, normalization of similarity scores, and facial recognition from video sequences. Results show that three-dimensional morphable models and normalization increase performance.”
In NIST’s FRVT 2013 Class F (Frontalization) testing, NIST compared the performance of algorithms from Cogent (A20C), Morpho (D20C), NEC (E20C) and Toshiba (J20C) and concluded that CyberExtruder’s Aureus 3D Frontalization approach produced results demonstrably better than the competition’s conventional approach.
In the NIST Face in Video Evaluation (FIVE), CyberExtruder’s Aureus 3D version 5.3 algorithm was tested and results are included in the 2017 NIST report. We are very proud of our performance in the first ever comparison of algorithms on video datasets.
Independent Facial Recognition Testing and Evaluations
CyberExtruder’s approach to facial recognition software continues to evolve as computer processing power and market demand increase. Our unique approach to facial recognition has gained attention from respected individuals interested in evaluating and conducting testing on our software.
We always welcome and encourage outside scrutiny and feedback as it provides a necessary step on the road to improving our technology.
Current – We are participating in NIST’s Ongoing FRVT evaluation
Current – We are working with Dr. Michael King of the Harris Institute for Assured Information at Florida Institute of Technology
2014 – Lacey Best-Rowden and Dr. Anil Jain at Michigan State University evaluated Aureus 3D as part of their publication “Unconstrained Facial Recognition: Identifying a Person of Interest from a Media Collection”
2011 – Rutger Storm at Unisys, and in cooperation with the Utrecht University of Applied Sciences, Netherlands, evaluated Aureus 3D as part of the research for his publication “Impact of image morphing on face recognition”
2004- Dr. Ernst Mucke conducted an investigation for Identix which used Aureus 3D to develop a first version of an operational surveillance system using 3D face models and Identix’ ABIS 3.0 search engine.
They say we are our own worst critic, and in our business, we have to be. We challenge ourselves to be better every day, and we continuously reinvest in our technology. Our current algorithms (Aureus 3D version 5.7) reflect that drive for excellence.
To illustrate our current level of performance we’re presenting results derived from NIST’s FERET and FRGC data sets, the University of Massachusetts’ Computer Vision Lab’s Labeled Faces in the Wild (LFW) data set, and our in-house Ultimate data set.
FERET Data set
NIST’s FERET data set is a great collection of 7,833 facial images of 955 people displaying examples of extreme pose which range from near frontal to nearly profile.
Aureus 3D 5.7 Performance on the FERET Data set
LFW Data set
The Labeled Faces in the Wild data set contains 9,125 facial images of 1,673 people designed for studying the problem of unconstrained facial recognition. This data set contains more than 13,000 images of faces collected from the Internet.
Aureus 3D 5.7 Performance on the Labeled Faces in the Wild Data set
FRGC Data set
The FRGC set was created by NIST for the 2010 Face Recognition Grand Challenge. It contains 22,549 images of 466 people. Variable lighting conditions across the face are the primary distinguishing factor of this set.
Aureus 3D 5.7 Performance on the FRGC Data set
Ultimate Data set
The Ultimate data set is our own internal collection of images which we feel represent the hardest test bed possible. It includes extreme instances of pose, lighting, age differences, low resolution images and even comparisons of artist’s sketches. It contains 10,210 examples of 1,000 people.
Aureus 3D 5.7 Performance on our Ultimate Data set