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Lightweight feature extraction method for efficient acoustic-based animal recognition in wireless acoustic sensor networks

机译:轻量级特征提取方法,用于无线声学传感器网络中高效的声学动物识别

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Wireless acoustic sensor networks represent an attractive solution that can be deployed for animal detection and recognition in a monitored area. A typical configuration for this application would be to transmit the whole acquired audio signal through multi-hop communication to a remote server for recognition. However, continuous data streaming can cause a severe decline in the energy of the sensors, which consequently reduces the network lifetime and questions the viability of the application. An efficient solution to reduce the sensor's radio activity would be to perform the recognition task at the source sensor then to communicate the result to the remote server. This approach is intended to save the energy of the acoustic source sensor and to unload the network from carrying, probably, useless data. However, the validity of this solution depends on the energy efficiency of performing on-sensor detection of a new acoustic event and accurate recognition. In this context, this paper proposes a new scheme for on-sensor energy-efficient acoustic animal recognition based on low-complexity methods for feature extraction using the Haar wavelet transform. This scheme achieves more than 86% in recognition accuracy while saving 71.59% of the sensor energy compared with the transmission of the raw signal.
机译:无线声学传感器网络代表一个有吸引力的解决方案,可以部署用于监控区域中的动物检测和识别。本申请的典型配置将通过与远程服务器的多跳通信将整个获取的音频信号发送到远程服务器以进行识别。然而,连续数据流可能导致传感器的能量严重下降,从而降低了网络寿命并提出了应用程序的可行性。减少传感器的无线电活动的有效解决方案是在源传感器处执行识别任务,然后将结果传送到远程服务器。这种方法旨在节省声源传感器的能量并卸载网络携带,可能是无用的数据。然而,该解决方案的有效性取决于执行新的声学事件的传感器检测的能量效率和准确识别。在本文中,本文提出了一种基于使用HAAR小波变换的特征提取的低复杂性方法的传感器节能声学动物识别的新方案。该方案以识别准确性实现86%以上的86%以上,同时节省了与原始信号的传输相比的传感器能​​量的71.59%。

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