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Mobile User Identity Sensing Using the Motion Sensor

机译:使用运动传感器感测移动用户身份

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Employing mobile sensor data to recognize user behavioral activities has been well studied in recent years. However, to adopt the data as a biometric modality has rarely been explored. Existing methods either used the data to recognize gait, which is considered as a distinguished identity feature; or segmented a specific kind of motion for user recognition, such as phone picking-up motion. Since the identity and the motion gesture jointly affect motion data, to fix the gesture (walking or phone picking-up) definitively simplifies the identity sensing problem. However, it meanwhile introduces the complexity from gesture detection or requirement on a higher sample rate from motion sensor readings, which may draw the battery fast and affect the usability of the phone. In general, it is still under investigation that motion based user authentication in a large scale satisfies the accuracy requirement as a stand-alone biometrics modality. In this paper, we propose a novel approach to use the motion sensor readings for user identity sensing. Instead of decoupling the user identity from a gesture, we reasonably assume users have their own distinguishing phone usage habits and extract the identity from fuzzy activity patterns, represented by a combination of body movements whose signals in chains span in relative low frequency spectrum and hand movements whose signals span in relative high frequency spectrum. Then Bayesian Rules are applied to analyze the dependency of different frequency components in the signals. During testing, a posterior probability of user identity given the observed chains can be computed for authentication. Tested on an accelerometer dataset with 347 users, our approach has demonstrated the promising results.
机译:近年来,已经充分研究了使用移动传感器数据来识别用户的行为活动。但是,很少有人探讨将数据用作生物特征识别方式。现有方法要么使用数据识别步态,这被认为是一种独特的身份特征。或细分特定类型的运动以进行用户识别,例如电话接听运动。由于身份和动作手势共同影响运动数据,因此修复手势(步行或拿起电话)将最终简化身份识别问题。但是,它同时会带来手势检测带来的复杂性,或者会带来来自运动传感器读数的更高采样率的要求,这可能会快速消耗电池并影响手机的可用性。通常,仍在调查中,大规模的基于运动的用户身份验证可满足作为独立生物特征形式的准确性要求。在本文中,我们提出了一种使用运动传感器读数进行用户身份感测的新颖方法。我们可以合理地假设用户有自己独特的电话使用习惯,并从模糊的活动模式中提取身份,而不是将手势从用户身份中分离出来,该活动模式是由身体运动的组合表示的,身体运动的信号链在相对低频范围内分布,而手部运动其信号跨越相对较高的频谱。然后应用贝叶斯规则分析信号中不同频率分量的依赖性。在测试期间,可以计算给定观察到的链的用户身份的后验概率,以进行身份​​验证。在具有347位用户的加速度计数据集上进行的测试,我们的方法证明了令人鼓舞的结果。

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