P. M. Oliveira, V. Lobo, V. Barroso, Femando Moura-Pires
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引用次数: 7
摘要
由于水下瞬态和背景干扰的复杂性,基于模型的瞬态检测/分类方法往往不实用。这激发了人们对数据驱动、无模型方法的兴趣。其中一种方法由Jones和Sayeed提出(参见1995年IEEE声学、语音和信号处理国际会议论文集,casp 95, Detroit, MI, p.1033-1036),并由Oliveira和Barroso修改(参见Proc. of MTS/IEEE Oceans 2000, August 2000),应用于水下瞬态检测。我们扩展了这种方法,以允许其在棕色水环境的更苛刻的环境中使用,其中背景噪声由多种不同的干扰组成,非白色,高度非平稳。此外,暂态和背景噪声在时频或相关域中的线性可分性假设将被丢弃,从而导致使用额外的分类器阶段。提出了一种最小化该分类器上的原型数量的方法。开发的方法用于检测和分类真实的水下瞬变,记录在葡萄牙海岸附近。通过与现有数据集的交叉验证,得到了该方法总体错误率的估计,表明该方法能够有效地应用于实际环境中。
Detection and classification of underwater transients with data driven methods based on time-frequency distributions and non-parametric classifiers
Due to the complexity of underwater transients and background interference, model based approaches to transient detection/classification are often not practical. This has motivated an interest for data-driven, model-free methods. One such method was presented by Jones and Sayeed (see Proceedings of the 1995 IEEE International Conference on Acoustics, Speech and Signal Processing CASSP 95, Detroit, MI, p.1033-1036) and modified by Oliveira and Barroso (see Proc. of MTS/IEEE Oceans 2000, August 2000), where it was applied to the detection of underwater transients. We extend that approach, to allow its use in the more demanding environment of a brown water environment, where background noise is constituted by a multitude of different interferences, non-white, and highly non-stationary. Also, the assumption of linear separability amongst the transients and the background noise in the time-frequency or related domains will be discarded, leading to the use of an additional classifier stage. A technique to minimize the number of prototypes on this classifier is presented. The developed methods are used to detect and classify real underwater transients, recorded off the Portuguese coast. Estimation of the overall error rate of the method is obtained using cross-validation with the available data set, showing that these methods can effectively be used in real environment situations.