AccelWord: Energy Efficient Hotword Detection through Accelerometer

Li Zhang, P. Pathak, Muchen Wu, Yixin Zhao, P. Mohapatra
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引用次数: 112

Abstract

Voice control has emerged as a popular method for interacting with smart-devices such as smartphones, smartwatches etc. Popular voice control applications like Siri and Google Now are already used by a large number of smartphone and tablet users. A major challenge in designing a voice control application is that it requires continuous monitoring of user?s voice input through the microphone. Such applications utilize hotwords such as "Okay Google" or "Hi Galaxy" allowing them to distinguish user?s voice command and her other conversations. A voice control application has to continuously listen for hotwords which significantly increases the energy consumption of the smart-devices. To address this energy efficiency problem of voice control, we present AccelWord in this paper. AccelWord is based on the empirical evidence that accelerometer sensors found in today?s mobile devices are sensitive to user?s voice. We also demonstrate that the effect of user?s voice on accelerometer data is rich enough so that it can be used to detect the hotwords spoken by the user. To achieve the goal of low energy cost but high detection accuracy, we combat multiple challenges, e.g. how to extract unique signatures of user?s speaking hotwords only from accelerometer data and how to reduce the interference caused by user?s mobility. We finally implement AccelWord as a standalone application running on Android devices. Comprehensive tests show AccelWord has hotword detection accuracy of 85% in static scenarios and 80% in mobile scenarios. Compared to the microphone based hotword detection applications such as Google Now and Samsung S Voice, AccelWord is 2 times more energy efficient while achieving the accuracy of 98% and 92% in static and mobile scenarios respectively.
通过加速计节能热词检测
语音控制已经成为一种与智能设备(如智能手机、智能手表等)交互的流行方法。Siri和Google Now等流行的语音控制应用程序已经被大量智能手机和平板电脑用户使用。设计语音控制应用程序的一个主要挑战是它需要对用户进行持续监控。通过麦克风进行语音输入。这些应用程序利用诸如“ok Google”或“Hi Galaxy”之类的热词来区分用户?她的语音命令和她的其他对话。语音控制应用程序必须持续收听热词,这大大增加了智能设备的能耗。为了解决语音控制的能源效率问题,我们在本文中提出了AccelWord。AccelWord是基于经验证据,加速度计传感器发现在今天?移动设备是否对用户敏感?年代的声音。我们还证明了用户?加速度计上的语音数据足够丰富,可以用来检测用户所说的热词。为了达到低能量成本和高检测精度的目标,我们面临着诸多挑战,例如如何提取用户的唯一签名?S仅从加速度计数据讲热词,如何减少用户造成的干扰?年代的流动性。我们最终将AccelWord作为一个独立的应用程序运行在Android设备上。综合测试表明,在静态场景下,AccelWord的热词检测准确率为85%,在移动场景下,准确率为80%。与Google Now和三星S Voice等基于麦克风的热词检测应用相比,AccelWord在静态和移动场景下的准确率分别达到98%和92%,能效提高了2倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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