Energy-aware Scheme for Animal Recognition in Wireless Acoustic Sensor Networks

Afnan Algobail, A. Soudani, Saad A. Al-Ahmadi
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引用次数: 5

Abstract

Wireless Acoustic Sensor Networks (WASN) have drawn tremendous attention due to their promising potential audio-rich applications such as battlefield surveillance, environment monitoring, and ambient intelligence. In this context, designing an approach for target recognition using sensed audio data represents a very attractive solution that offers a wide range of deployment opportunities. However, this approach faces the limited resource’s availability in the wireless sensor. The power consumption is considered to be the major concern for large data transmission and extensive processing. Thus, the design of successful audio based solution for target recognition should consider a trade-off between application efficiency and sensor capabilities. The main contribution of this paper is to design a low-power scheme for target detection and recognition based on acoustic signal. This scheme, using features extraction, is intended to locally detect a specific target and to notify a remote server with low energy consumption. This paper details the specification of the proposed scheme and explores its performances for low-power target recognition. The results showed the hypothesis' validity, and demonstrate that the proposed approach can produce classifications as accurate as 96.88% at a very low computational cost.
无线声传感器网络中动物识别的能量感知方案
无线声传感器网络(Wireless Acoustic Sensor Networks,简称:无线声传感器网络)因其在战场监视、环境监测和环境智能等领域具有广阔的应用前景而备受关注。在这种情况下,使用感测音频数据设计目标识别方法是一种非常有吸引力的解决方案,它提供了广泛的部署机会。然而,这种方法面临着无线传感器资源可用性有限的问题。功耗是大数据传输和广泛处理的主要问题。因此,设计成功的基于音频的目标识别解决方案应该考虑应用效率和传感器功能之间的权衡。本文的主要贡献在于设计了一种基于声信号的低功耗目标检测与识别方案。该方案利用特征提取技术在本地检测特定目标,并以较低的能耗通知远程服务器。本文详细介绍了所提方案的规格,并探讨了其在低功耗目标识别中的性能。结果证明了假设的有效性,并表明该方法可以在极低的计算成本下产生96.88%的分类准确率。
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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