Study on weak sound signal separation and pattern recognition under strong background noise in marine engineering

Song Liu, Jiantong Gao, Huayu Zhou, Kang Yang, Panpan Liu, Yifan Du
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Abstract

The extraction of weak acoustic signals under strong background noise is of great significance in the applications of target identification and localization. In this paper, the pulse signal with high randomness is set as the weak signal sound source, random noise and sine sound are used as the background noise. Under the condition of a signal-to-noise ratio of −20 dB, combined with blind source separation and neural network methods, the collected observation signals are subjected to weak sound signal separation and recognition research. The optimization method of centralization and scaling processing is used to eliminate the unfavorable influence of the uncertainty of the separated signal amplitude caused by the blind source separation method on the pattern recognition. The recognition result is verified by the combination of “weak impulse acoustic signal” and “random noise signal,” and the output vector (0.99 0.01 0.01) approaches (1 0 0), which is recognized as impulse acoustic signal. By combining blind source separation and neural network methods, the separation and identification of weak pulse signals under the condition of a signal-to-noise ratio of −20 dB can be achieved.
海洋工程中强背景噪声下的弱声信号分离与模式识别研究
在强背景噪声下提取弱声学信号在目标识别和定位应用中具有重要意义。本文将随机性较高的脉冲信号作为弱信号声源,随机噪声和正弦波作为背景噪声。在信噪比为-20 dB的条件下,结合盲源分离和神经网络方法,对采集到的观测信号进行弱声源信号分离和识别研究。采用集中化和比例化处理的优化方法,消除盲源分离法造成的分离信号振幅不确定性对模式识别的不利影响。通过 "弱脉冲声信号 "和 "随机噪声信号 "的组合验证了识别结果,输出向量(0.99 0.01 0.01)接近(1 0 0),被识别为脉冲声信号。通过盲源分离和神经网络方法的结合,可以实现信噪比为-20 dB条件下的弱脉冲信号的分离和识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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