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WristSpy: Snooping Passcodes in Mobile Payment Using Wrist-worn Wearables

机译:WristSpy:使用腕戴式可穿戴设备窥探移动支付中的密码

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Mobile payment has drawn considerable attention due to its convenience of paying via personal mobile devices at anytime and anywhere, and passcodes (i.e., PINs or patterns) are the first choice of most consumers to authorize the payment. This paper demonstrates a serious security breach and aims to raise the awareness of the public that the passcodes for authorizing transactions in mobile payments can be leaked by exploiting the embedded sensors in wearable devices (e.g., smartwatches). We present a passcode inference system, WristSpy, which examines to what extent the user's PIN/pattern during the mobile payment could be revealed from a single wrist-worn wearable device under different passcode input scenarios involving either two hands or a single hand. In particular, WristSpy has the capability to accurately reconstruct fine-grained hand movement trajectories and infer PINs/patterns when mobile and wearable devices are on two hands through building a Euclidean distance-based model and developing a training-free parallel PIN/pattern inference algorithm. When both devices are on the same single hand, a highly challenging case, WristSpy extracts multi-dimensional features by capturing the dynamics of minute hand vibrations and performs machine-learning based classification to identify PIN entries. Extensive experiments with 15 volunteers and 1600 passcode inputs demonstrate that an adversary is able to recover a user's PIN/pattern with up to 92% success rate within 5 tries under various input scenarios.
机译:移动支付由于其随时随地通过个人移动设备进行支付的便利性而引起了相当大的关注,并且密码(即PIN或模式)是大多数消费者授权支付的首选。本文演示了严重的安全漏洞,旨在提高公众的意识,即通过利用可穿戴设备(例如,智能手表)中的嵌入式传感器,可以泄露用于授权移动支付交易的密码。我们提供了密码推断系统WristSpy,该系统检查了在涉及两只手或一只手的不同密码输入情况下,单个腕戴式可穿戴设备可以在多大程度上显示移动支付期间用户的PIN /模式。特别是,WristSpy能够通过建立基于欧几里德距离的模型并开发免培训的并行PIN /模式推理算法,准确地重建细粒度的手部运动轨迹,并在移动和可穿戴设备在两只手上时推断PIN /模式。 。当两个设备放在同一只手上时,这是一个极富挑战性的情况,Wri​​stSpy通过捕获分针振动的动态来提取多维特征,并执行基于机器学习的分类以识别PIN条目。通过对15位志愿者和1600个密码输入进行的广泛实验表明,在各种输入情况下,对手可以在5次尝试中以高达92%的成功率恢复用户的PIN /模式。

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