基于MFCC的水下目标听觉区特征提取

W. Wenbo, Li Sichun, Y. Jianshe, Liu Zhao, Zhou Weicun
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引用次数: 22

摘要

近年来,水下目标辐射噪声的特征提取越来越受到科学家们的重视。因此,丰富水下目标的特征储备对于科学家探测和研究水下目标具有十分重要的意义。本文提出了一种针对水下目标MFCC特征系数的特征提取算法。低频倒谱系数(MFCCs)是基于人耳的非线性频率特征。本质上,MFCC是通过选择不同频段的能量作为目标的特征来工作的。由于它在表达低频语音频谱方面的优异性能和对人类听觉的良好模拟,已成为说话人识别系统中最重要的特征之一。然而,对于水下目标特征的表达是否适用,目前还不清楚。根据一系列相关的实验和研究结果,科学家们发现声呐识别不同水下辐射噪声的原理与人耳识别声音的原理是相同的。同时,该方法具有一定的优越性。例如,低频噪声(在可听范围内)是舰船和潜艇辐射噪声的主要来源,它可以传播很远的距离。值得庆幸的是,提取MFCC的方法对该频段背景噪声的干扰具有较强的鲁棒性。与此同时,海洋总是有混乱的背景噪音。水下声学过程通常是非常复杂和非线性的,因此需要适当的非线性原理。因此,MFCC可以应用于水下辐射噪声的特征提取。本文对不同海洋生物(鲸、海狮、海豚)、潜水员、船只的辐射噪声进行了研究。提取并比较了它们的MFCC特征系数。结果表明,不同目标的MFCC特征系数存在明显差异。因此,MFCC可以作为一种有效的特征进行提取和识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature extraction of underwater target in auditory sensation area based on MFCC
In recent years, scientists have been paying more and more attention on extracting features from the radiated noise of underwater targets. Thus, enriching the feature reserve of underwater targets is quite significant for scientists in order to detect and study them. The paper presents an algorithm of feature extraction, which focuses on the MFCC feature coefficients of underwater targets. Mel Frequency Cepstral Coefficients (MFCCs) are based on the nonlinear frequency feature of human ears. In essence, MFCC works via selecting energy in different frequency bands as the feature of target. Because of its outstanding performance in expressing speech spectrum at low frequency, since it is a good simulation of human auditory sensation, it has been one of the most important features used in speaker recognition systems. However, whether it is applicable in the case of expressing the features of underwater targets was still unclear. According to the result of a series of correlative experiments and researches, scientists found that the principle of distinguishing different underwater radiated noises by sonarman is the same as voice recognition by human ears. Meanwhile, the method of extracting MFCC has some advantages. For example, noises at low frequencies (in the audible range), which are the main sources of radiated noises ships and submarines, can propagate for a long distance. Fortunately, the method of extracting MFCC is robust to resist the disturbance of background noise at that frequency band. At the same time, seas and oceans always have chaotic background noise. The acoustic processes underwater are usually very complicated and nonlinear, and therefore requiring a proper nonlinear principle. Thus, MFCC can be applied to feature extraction of underwater radiated noises. In this paper, the radiated noises of different marine lifes (whales, sea lions and dolphins ), divers, boats and ships are all researched. Their MFCC feature coefficients are extracted and compared. The results show that different targets have clear differences in MFCC feature coefficients. Therefore, MFCC can be an effective feature for extraction and recognition.
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