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A Methodology for Analyzing an Acoustic Scene in Sensor Arrays

机译:分析传感器阵列中声音场景的方法

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摘要

Presented here is a novel clustering method for Hidden Markov Models (HMMs) and its application in acoustic scene analysis. In this method, HMMs are clustered based on a similarity measure for stochastic models defined as the generalized probability product kernel (GPPK), which can be efficiently evaluated according to a fast algorithm introduced by Chen and Man (2005) [1]. Acoustic signals from various sources are partitioned into small frames. Frequency features are extracted from each of the frames to form observation vectors. These frames are further grouped into segments, and an HMM is trained from each of such segments. An unknown segment is categorized with a known event if its HMM has the closest similarity with the HMM from the corresponding labeled segment. Experiments are conducted on an underwater acoustic dataset from Steven Maritime Security Laboratory, Data set contains a swimmer signature, a noise signature from the Hudson River, and a test sequence with a swimmer in the Hudson River. Experimental results show that the proposed method can successfully associate the test sequence with the swimmer signature at very high confidence, despite their different time behaviors.
机译:本文介绍了一种新型的隐马尔可夫模型(HMM)聚类方法,并将其应用于声学场景分析中。在这种方法中,基于被定义为广义概率乘积核(GPPK)的随机模型的相似性度量,将HMM聚类,可以根据Chen和Man(2005)提出的快速算法[1]对其进行有效评估。来自各种来源的声音信号被分成小帧。从每个帧中提取频率特征以形成观察向量。这些帧被进一步分组为段,并且从每个这样的段中训练HMM。如果未知段的HMM与来自相应标记段的HMM最相似,则将未知段分类为已知事件。实验是在史蒂文海事安全实验室的水下声学数据集上进行的,数据集包含游泳者签名,哈德逊河的噪声签名以及在哈德逊河的游泳者的测试序列。实验结果表明,所提出的方法尽管具有不同的时间行为,却能够以很高的置信度成功地将测试序列与游泳者签名相关联。

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