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Multiaspect acoustic identification of submerged elastic targets via wave-based matching pursuits and continuous hidden Markov models

机译:通过波基匹配追求和连续隐马尔可夫模型的淹没弹性目标的多个主题声学识别

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A wave-based matching-pursuits algorithm is used to parse multi-aspect time-domain backscattering data into its underlying wavefront-resonance constituents, or features. Consequently, the N multi-aspect waveforms under test are mapped into N feature vectors, y$-n$/. Target identification is effected by fusing these N vectors in a maximum-likelihood sense, which we show, under reasonable assumptions, can be implemented via a hidden Markov model (HMM). In this paper, we utilize a continuous-HMM paradigm, and compare its performance to its discrete counterpart. Algorithm performance is assessed by considering measured acoustic scattering data from five similar submerged elastic targets.
机译:基于波的匹配追求算法用于将多字母时域反向散射数据解析为其底层的波前共振成分或特征。因此,DEST的N个多方面波形被映射到N特征向量,Y $ -n $ /。通过融合这些N载体的最大似然感来实现目标识别,我们在合理的假设下显示,可以通过隐藏的马尔可夫模型(HMM)来实现。在本文中,我们利用了连续的嗯范式,并将其性能与其离散对应物进行比较。通过考虑来自五种类似浸没的弹性目标的测量的声学散射数据来评估算法性能。

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