A perceptually based approach for the improvement of automatic identification of naval targets

H. Tolba, A. Elgerzawy
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引用次数: 3

Abstract

In this paper we investigate the identification of naval targets (ships or submarine) through the identification of the underwater sound they produce. Our approach is based on the use of Continuous Hidden Markov Models (CHMMs) to identify such naval targets. The general Gaussian density distribution HMM is developed for CHMM system. Several experiments have been conducted to study the effects of speed, distance and the direction of the naval targets on the identification rate (IR) of such targets using different features Mel-Frequency Cepstrum Coefficients (MFCCs), Perceptual Linear Prediction (PLP), and Relative Spectral PLP (RASTA-PLP). The obtained IR was found to be 100% (MFCCs & PLP) and 91.67 (RASTA) while changing the direction, 91.97% (MFCCs & PLP) and 83.33% (RASTA) while changing the distance and 58.3% (MFCCs & PLP) and 25% (RASTA) while changing the speed of the target. Results showed that speed has the maximum effect on the identification process. We applied our engine to 19 real targets signals representing 5 classes the results were 100% (MFCCs & PLP) and 84.2% (RASTA).
一种基于感知的舰艇目标自动识别改进方法
本文通过识别舰船或潜艇所产生的水声来研究舰船或潜艇目标的识别问题。我们的方法是基于使用连续隐马尔可夫模型(chmm)来识别这样的海军目标。针对CHMM系统,提出了广义高斯密度分布HMM。利用Mel-Frequency倒谱系数(MFCCs)、感知线性预测(PLP)和相对谱预测(RASTA-PLP)等不同特征,研究了速度、距离和方向对舰船目标识别率的影响。改变目标方向时的IR分别为100% (MFCCs & PLP)和91.67 (RASTA),改变距离时的IR分别为91.97% (MFCCs & PLP)和83.33% (RASTA),改变目标速度时的IR分别为58.3% (MFCCs & PLP)和25% (RASTA)。结果表明,速度对鉴别过程的影响最大。我们将该引擎应用于代表5个类别的19个真实目标信号,结果为100% (MFCCs & PLP)和84.2% (RASTA)。
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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