Yoshitomo Matsubara, H. Nishimura, T. Samura, Hiroyuki Yoshimoto, Ryohei Tanimoto
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Screen Unlocking by Spontaneous Flick Reactions with One-Class Classification Approaches
Physical biometrics technologies are introduced to the login process on smart devices. However, many of them have several disadvantages: requirement of embedding special sensor, limited environment to use and copy of key information for authentication. In this research, we proposed a new biometrics technique which can capture user's inimitable behavioral features in his/her spontaneous flick reactions on a touch-screen display for unlocking the device when it wakes up. For practical use of the technique, we adopted one-class classification approaches and they achieved about 1-2% EERs for 2500 samples from 50 subjects.