A complete and fully automated face verification system on mobile devices
Mobile devices have been widely used not only as a communication tool, but also a digital assistance to our daily life, which imposes high security concern on mobile devices. In this paper we present a natural and non-intrusive way to secure mobile devices, i.e. a complete and fully automated face v...
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sg-ntu-dr.10356-1055962019-12-06T21:54:15Z A complete and fully automated face verification system on mobile devices Ren, Jianfeng Jiang, Xudong Yuan, Junsong School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering Mobile devices have been widely used not only as a communication tool, but also a digital assistance to our daily life, which imposes high security concern on mobile devices. In this paper we present a natural and non-intrusive way to secure mobile devices, i.e. a complete and fully automated face verification system. It consists of three sub-systems: face detection, alignment and verification. The proposed subspace face/eye detector locates the eyes at a much higher precision than Adaboost face/eye detector. By utilizing attentional cascade strategy, the proposed face/eye detector achieves a comparable speed to Adaboost face/eye detector in this “close-range” application. The proposed approach that determines the class-specific threshold without sacrificing the training data for the validation data further boosts the performance. The proposed system is systematically evaluated on O2FN, AR and CAS-PEAL databases, and compared with many different approaches. Compared to the best competitive system, which is built upon Adaboost face/eye detector and ERE approach for face recognition, the proposed system reduces the overall equal error rate from 8.49% to 3.88% on the O2FN database, from 7.64% to 1.90% on the AR database and from 9.30% to 5.60% on the CAS-PEAL database. The proposed system is implemented on O2 XDA Flame and on average it takes 1.03 s for the whole process, including face detection, eye detection and face verification. 2013-10-18T04:06:16Z 2019-12-06T21:54:15Z 2013-10-18T04:06:16Z 2019-12-06T21:54:15Z 2012 2012 Journal Article Ren, J., Jiang, X., & Yuan, J. (2013). A complete and fully automated face verification system on mobile devices. Pattern Recognition, 46(1), 45-56. 0031-3203 https://hdl.handle.net/10356/105596 http://hdl.handle.net/10220/16604 http://dx.doi.org/10.1016/j.patcog.2012.06.013 en Pattern recognition |
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DRNTU::Engineering::Electrical and electronic engineering Ren, Jianfeng Jiang, Xudong Yuan, Junsong A complete and fully automated face verification system on mobile devices |
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Mobile devices have been widely used not only as a communication tool, but also a digital assistance to our daily life, which imposes high security concern on mobile devices. In this paper we present a natural and non-intrusive way to secure mobile devices, i.e. a complete and fully automated face verification system. It consists of three sub-systems: face detection, alignment and verification. The proposed subspace face/eye detector locates the eyes at a much higher precision than Adaboost face/eye detector. By utilizing attentional cascade strategy, the proposed face/eye detector achieves a comparable speed to Adaboost face/eye detector in this “close-range” application. The proposed approach that determines the class-specific threshold without sacrificing the training data for the validation data further boosts the performance. The proposed system is systematically evaluated on O2FN, AR and CAS-PEAL databases, and compared with many different approaches. Compared to the best competitive system, which is built upon Adaboost face/eye detector and ERE approach for face recognition, the proposed system reduces the overall equal error rate from 8.49% to 3.88% on the O2FN database, from 7.64% to 1.90% on the AR database and from 9.30% to 5.60% on the CAS-PEAL database. The proposed system is implemented on O2 XDA Flame and on average it takes 1.03 s for the whole process, including face detection, eye detection and face verification. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Ren, Jianfeng Jiang, Xudong Yuan, Junsong |
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Article |
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Ren, Jianfeng Jiang, Xudong Yuan, Junsong |
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Ren, Jianfeng |
title |
A complete and fully automated face verification system on mobile devices |
title_short |
A complete and fully automated face verification system on mobile devices |
title_full |
A complete and fully automated face verification system on mobile devices |
title_fullStr |
A complete and fully automated face verification system on mobile devices |
title_full_unstemmed |
A complete and fully automated face verification system on mobile devices |
title_sort |
complete and fully automated face verification system on mobile devices |
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2013 |
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https://hdl.handle.net/10356/105596 http://hdl.handle.net/10220/16604 http://dx.doi.org/10.1016/j.patcog.2012.06.013 |
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