Continuous observation and archival of acoustic scenes using wireless sensor networks

G. Wichern, H. Kwon, A. Spanias, A. Fink, H. Thornburg
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引用次数: 2

Abstract

Acoustic scene analysis has proven an invaluable tool in diverse fields ranging from biology to defense and security. Wireless sensor networks present an attractive means of implementing an acoustic monitoring system due to their low cost and ability to be easily deployed in a wide range of areas. In this paper acoustic features are extracted at the sensor level, and then transmitted to the base station where acoustic events are segmented using a dynamic Bayseian network. Segmented events are then indexed with the time and location where they occurred, allowing users to link events in terms of time, place, and acoustic characteristics. Our experiments show that a feature set that allows for general characterization of diverse sound environments can be extracted at the sensor level, while an illustrative example shows the segmentation algorithm detecting footsteps in low SNR conditions.
利用无线传感器网络对声学场景进行连续观测和存档
声场景分析已被证明是一个宝贵的工具,在各个领域,从生物学到国防和安全。无线传感器网络由于其低成本和易于在广泛领域部署的能力,提供了一种有吸引力的实现声学监测系统的手段。本文首先在传感器级提取声特征,然后将其传输到基站,利用动态贝叶斯网络对声事件进行分割。然后根据事件发生的时间和地点对分段事件进行索引,允许用户根据时间、地点和声学特征将事件联系起来。我们的实验表明,可以在传感器级别提取允许多种声音环境的一般特征的特征集,而一个说述性示例显示了在低信噪比条件下检测脚步声的分割算法。
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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