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Underwater Acoustic Target Classification Based on Modified GFCC Features

机译:基于修改的GFCC功能的水下声学目标分类

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A major challenge for underwater acoustic target classification relates to significant performance decrease in complex underwater environment. Recent researches have shown that the auditory feature extracted from Gammatone filter has remarkable ability on robust speaker identification. If this remarkable ability can be simulated, the accuracy of underwater acoustic target classification will be improved significantly in noisy underwater environment. Aiming at this purpose, a novel implementation of the Gammatone filter-based feature is proposed and applied to underwater acoustic target classification in this paper. Support Vector Machine (SVM) is used as the classifier in our experiments. Classification results indicates that the proposed feature, namely Modified Gammatone Frequency Cepstrum Coefficients (MGFCC) features are more robust than conventional acoustic features in underwater acoustic target classification.
机译:水下声学目标分类的主要挑战涉及复杂水下环境的显着性能下降。最近的研究表明,从γ滤波器中提取的听觉特征对强大的扬声器识别具有显着的能力。如果可以模拟这种显着的能力,在嘈杂的水下环境中将显着提高水下声学目标分类的准确性。为此目的,提出了一种新的基于γ滤光片的特征的实施,并应用于本文的水下声学目标分类。支持向量机(SVM)用作我们实验中的分类器。分类结果表明,所提出的特征,即改进的酚酮频率综合系数(MGFCC)特征比在水下声学目标分类中的传统声学特征更鲁棒。

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