DSP.Ear: leveraging co-processor support for continuous audio sensing on smartphones

Petko Georgiev, N. Lane, Kiran Rachuri, C. Mascolo
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引用次数: 59

Abstract

The rapidly growing adoption of sensor-enabled smartphones has greatly fueled the proliferation of applications that use phone sensors to monitor user behavior. A central sensor among these is the microphone which enables, for instance, the detection of valence in speech, or the identification of speakers. Deploying multiple of these applications on a mobile device to continuously monitor the audio environment allows for the acquisition of a diverse range of sound-related contextual inferences. However, the cumulative processing burden critically impacts the phone battery. To address this problem, we propose DSP.Ear -- an integrated sensing system that takes advantage of the latest low-power DSP co-processor technology in commodity mobile devices to enable the continuous and simultaneous operation of multiple established algorithms that perform complex audio inferences. The system extracts emotions from voice, estimates the number of people in a room, identifies the speakers, and detects commonly found ambient sounds, while critically incurring little overhead to the device battery. This is achieved through a series of pipeline optimizations that allow the computation to remain largely on the DSP. Through detailed evaluation of our prototype implementation we show that, by exploiting a smartphone's co-processor, DSP.Ear achieves a 3 to 7 times increase in the battery lifetime compared to a solution that uses only the phone's main processor. In addition, DSP.Ear is 2 to 3 times more power efficient than a naïve DSP solution without optimizations. We further analyze a large-scale dataset from 1320 Android users to show that in about 80-90% of the daily usage instances DSP.Ear is able to sustain a full day of operation (even in the presence of other smartphone workloads) with a single battery charge.
DSP。Ear:利用协处理器支持智能手机上的连续音频感应
传感器智能手机的迅速普及极大地推动了使用手机传感器监控用户行为的应用程序的激增。这些传感器中的一个中心传感器是麦克风,例如,它可以检测语音中的价,或识别说话者。在移动设备上部署多个这样的应用程序,以持续监控音频环境,从而可以获取各种与声音相关的上下文推断。然而,累积的处理负担严重影响着手机电池。为了解决这个问题,我们提出了DSP。Ear——一种集成传感系统,利用商用移动设备中最新的低功耗DSP协处理器技术,使执行复杂音频推理的多种既定算法能够连续和同时运行。该系统从声音中提取情绪,估计房间里的人数,识别扬声器,并检测常见的环境声音,同时对设备电池的开销很少。这是通过一系列的管道优化来实现的,这些优化允许计算在很大程度上保留在DSP上。通过对原型实现的详细评估,我们表明,通过利用智能手机的协处理器DSP。与仅使用手机主处理器的解决方案相比,Ear的电池寿命延长了3到7倍。此外,DSP。Ear的功耗效率是未经优化的naïve DSP解决方案的2到3倍。我们进一步分析了来自1320个Android用户的大规模数据集,显示在大约80-90%的日常使用实例中,DSP。只需一次电池充电,Ear就可以维持一整天的运行(即使在其他智能手机工作负载存在的情况下)。
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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