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A low-power real-time hidden Markov model accelerator for gesture user interface on wearable devices

机译:可穿戴设备上的手势用户界面的低功耗实时隐马尔可夫模型加速器

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A low-power and real-time hidden Markov model (HMM) accelerator is proposed for gesture user interfaces on wearable smart devices. HMM algorithm is widely used for sequence recognitions such as speech recognition and gesture recognition due to its best-in-class recognition accuracy. However, the HMM algorithm incorporates high computational complexity and requires massive memory bandwidth for sequence matches. There have been studies on hardware acceleration of the HMM algorithm to resolve these issues, but they were focused on the speech recognition and did not incorporate the motion orientation capability required for the gesture recognition case. In this paper, we propose an HMM accelerator incorporating the motion orientation block for gesture recognitions on wearable devices. Binary search is exploited in the motion orientation to avoid the division and arctangent associated with the orientation and reduce its arithmetic complexity. In addition, gesture models are clustered in the gesture database to save the memory bandwidth by reducing memory transactions. Moreover, logarithmic arithmetic is used in Viterbi decoding in the HMM for more reduction in its complexity. Thanks to these schemes, this work achieves 25.6% power reduction compared with a plain hardware implementation of the gesture recognizing HMM.
机译:为可穿戴智能设备上的手势用户界面提出了低功耗和实时隐马尔可夫模型(HMM)加速器。由于其最佳识别精度,HMM算法广泛用于诸如语音识别和手势识别的序列识别。然而,HMM算法包含高计算复杂性,并且需要序列匹配的大量内存带宽。已经研究了HMM算法的硬件加速度来解决这些问题,但它们专注于语音识别,并且不包含手势识别案件所需的运动方向能力。在本文中,我们提出了一种包括用于在可穿戴设备上的手势识别的运动方向块的HMM加速器。二进制搜索在运动方向上被利用,以避免与方向相关的划分和artivant,并降低其算术复杂性。此外,手势模型在手势数据库中群集,以通过减少内存事务来保存内存带宽。此外,对数算法用于在HMM中的维特比解码中用于其复杂性的更低。由于这些方案,这项工作与识别HMM的手势的普通硬件实现相比,减少了25.6%的功率降低。

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