一个测量声延迟对智能手机状态依赖的框架

D. V. Le, Jacob W. Kamminga, H. Scholten, P. Havinga
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引用次数: 0

摘要

音频延迟,定义为音频信号从麦克风传播到应用程序或从应用程序传播到扬声器的时间持续时间,显著影响许多移动传感应用程序的性能,包括基于声学的定位和语音识别。众所周知,在手机应用开发社区中,音频延迟可能会很严重(高达数百毫秒),并且会因智能手机的不同而有所不同。因此,研究智能手机音频延迟的原因和影响是非常必要的。据我们所知,有些手机应用可以测量音频延迟,但无法测量智能手机的相应状态,如可用内存、CPU负载、电池电量以及文件和文件夹数量。在本文中,我们是第一个提出一个框架,可以同时记录音频延迟和智能手机的状态。提议的框架不需要时间同步或固件重新编程,并且可以在独立设备上运行。由于该框架是为了研究延迟因果关系而设计的,所以智能手机的状态是尽可能故意和随机变化的。为了评估这个框架,我们提出了一个Android设备的案例研究。我们设计并实现了一个延迟应用程序,可以同时测量智能手机的延迟和状态。初步结果表明,潜伏期值具有较大的平均值(50 ~ 150 ms)和方差(4 ~ 40 ms)。只需简单地减去偏移量,就可以大大减少延迟的影响。为了实现改进的延迟预测,可以处理方差,一个先进的回归模型将是首选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework to Measure Reliance of Acoustic Latency on Smartphone Status
Audio latency, defined as the time duration when an audio signal travels from the microphone to an app or from an app to the speakers, significantly influences the performance of many mobile sensing applications including acoustic based localization and speech recognition. It is well known within the mobile app development community that audio latencies can be significant (up to hundreds of milliseconds) and vary from smartphone to smartphone and from time to time. Therefore, it is essential to study the causes and effects of the audio latency in smartphones. To the best of our knowledge, there exist mobile apps that can measure audio latency but not the corresponding status of smartphones such as available RAM, CPU loads, battery level, and number of files and folders. In this paper, we are the first to propose a framework that can simultaneously log both the audio latency and the status of smartphones. The proposed framework does not require time synchronization or firmware reprogramming and can run on a standalone device. Since the framework is designed to study the latency causality, the status of smartphones are deliberately and randomly varied as maximum as possible. To evaluate the framework, we present a case study with Android devices. We design and implement a latency app that simultaneously measures the latency and the status of smartphones. The preliminary results show that the latency values have large means (50 – 150 ms) and variances (4–40 ms). The effect of latency can be considerably reduced by just simply subtracting the offset. In order to achieve improved latency prediction that can cope with the variances an advanced regression model would be preferred.
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