首页> 外文会议>Conference on Unattended/Unmanned Ground, Ocean, and Air Sensor Technologies and Applications VI; 20040412-20040415; Orlando,FL; US >Coherence Analysis using Canonical Coordinate Decomposition with Applications to Sparse Processing and Optimal Array Deployment
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Coherence Analysis using Canonical Coordinate Decomposition with Applications to Sparse Processing and Optimal Array Deployment

机译:使用规范坐标分解的相干分析及其在稀疏处理和最佳阵列部署中的应用

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Sparse array processing methods are typically used to improve the spatial resolution of sensor arrays for the estimation of direction of arrival (DOA). The fundamental assumption behind these methods is that signals that are received by the sparse sensors (or a group of sensors) are coherent. However, coherence may vary significantly with the changes in environmental, terrain, and, operating conditions. In this paper canonical correlation analysis is used to study the variations in coherence between pairs of sub-arrays in a sparse array problem. The data set for this study is a subset of an acoustic signature data set, acquired from the US Army TACOM-ARDEC, Picatinny Arsenal, NJ. This data set is collected using three wagon-wheel type arrays with five microphones. The results show that in nominal operating conditions, i.e. no extreme wind noise or masking effects by trees, building, etc., the signals collected at different sensor arrays are indeed coherent even at distant node separation.
机译:稀疏阵列处理方法通常用于提高传感器阵列的空间分辨率,以估计到达方向(DOA)。这些方法背后的基本假设是,稀疏传感器(或一组传感器)接收到的信号是相干的。但是,连贯性可能会随着环境,地形和操作条件的变化而显着变化。本文采用典型相关分析来研究稀疏阵列问题中子阵列对之间的相干性变化。这项研究的数据集是从美国陆军TACOM-ARDEC(新泽西州Picatinny Arsenal)获得的声学特征数据集的子集。该数据集是使用带有五个麦克风的三个车轮类型的阵列收集的。结果表明,在正常的工作条件下,即没有极端的风噪或树木,建筑物等的掩盖作用,即使在远节点分离时,在不同传感器阵列上收集的信号的确是一致的。

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