A large number of Internet of Things (IoT) devices today are powered by batteries, which are often expensive to maintain and may cause serious environmental pollution. To avoid these problems, researchers have begun to consider the use of energy systems based on energy-harvesting units for such devices. However, the power harvested from an ambient source is fundamentally small and unstable, resulting in frequent power failures during the operation of IoT applications involving, for example, intermittent speech signals and the streaming of videos. This paper presents a deep-learning-based speech recovery system that reconstructs intermittent speech signals from self-powered IoT devices. Our intermittent speech recovery system (ISR) consists of three stages: interpolation, recovery, and combination. The experimental results show that our recovery system increases speech quality by up to 707.1%, while increasing speech intelligibility by up to 92.1%. Most importantly, our ISR system also enhances the WER scores by up to 65.6%. To the best of our knowledge, this study is one of the first to reconstruct intermittent speech signals from self-powered-sensing IoT devices. These promising results suggest that even though self powered microphone devices function with weak energy sources, our ISR system can still maintain the performance of most speech-signal-based applications.
翻译:今天,大量物质(IoT)的互联网设备由电池驱动,电池往往费用昂贵,难以维持,并可能造成严重的环境污染。为避免这些问题,研究人员已开始考虑使用基于能源采集装置的能源系统。然而,从环境源中获取的电力基本上很小,而且不稳定,导致在使用IoT应用程序期间经常发生电力故障,例如,间歇性语音信号和视频流。本文介绍了一个深层学习的语音恢复系统,该系统从自动IoT装置中重建间歇性语音信号。我们间歇性语音恢复系统(ISR)由三个阶段组成:内插、恢复和组合。实验结果表明,我们的恢复系统将语音质量提高707.1 %,同时将语音智能提高92.1 %。最重要的是,我们的IoT应用系统还提高了WER的分数,达到65.6 %。据我们所知,这一研究是第一个从自动性能智能的IOT装置中重建间断式语音信号信号的系统。这些最有希望的结果表明,即使自动式式式的语音信号装置仍能保持微的光源。