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Deep Identifier: A Deep Learning-Based Lightweight Approach for User Identity Recognition

机译:深度标识符:用于用户身份识别的深度学习轻量级方法

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Identifying a user precisely through mobile-device-based sensing information is a challenging and practical issue as it is usually affected by context and human-action interference. We propose a novel deep learning-based lightweight approach called DeepIdentifier. More specifically, we design a powerful and efficient block, namely funnel block, as the core components of our approach, and further adopt depth-wise separable convolutions to reduce the model computational overhead. Moreover, a multi-task learning approach is utilized on DeepIdentifier, which learns to recognize the identity and reconstruct the signal of the input sensor data simultaneously during the training phase. The experimental results on two real-world datasets demonstrate that our proposed approach significantly outperforms other existing approaches in terms of efficiency and effectiveness, showing up to 17 times and 40 times improvement over state-of-the-art approaches in terms of model size reduction and computational cost respectively, while offering even higher accuracy. To the best of our knowledge, DeepIdentifier is the first lightweight deep learning approach for solving the identity recognition problem. The dataset we gathered, together with the implemented source code, is public to facilitate the research community.
机译:精确地通过基于移动设备的传感信息识别用户是一个具有挑战性和实际问题,因为它通常受到上下文和人类的干扰的影响。我们提出了一种名为Deepidentifier的新型深度学习的轻质方法。更具体地说,我们设计了一个功能强大且有效的块,即漏斗块,作为我们方法的核心组件,进一步采用深度可分离的卷曲来减少模型计算开销。此外,在深度朝中使用多任务学习方法,其学会在训练阶段期间同时识别标识并重建输入传感器数据的信号。两个现实世界数据集的实验结果表明,我们所提出的方法在效率和有效性方面显着优于其他现有方法,在模型尺寸减少方面,最多可达17倍和最先进的方法改善和计算成本分别,同时提供更高的准确性。据我们所知,深度泰德利是解决身份识别问题的第一种轻型深度学习方法。我们收集的数据集与实施的源代码一起是公开的,促进研究界。

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