有源声呐回波二维匹配滤波特征提取及分类检测
Two-dimensional matched filtering feature extraction and classification detection of active sonar echo
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摘要: 为降低有源声呐回波检测中的杂波虚警, 提升低虚警率下的目标回波检测率, 提出了一种基于二维匹配滤波的有源声呐回波分类检测方法。该方法将有源声呐接收数据的匹配信号划分为多个脉宽合适的子信号, 并利用各子信号分别对接收数据进行匹配滤波处理, 提取能够同时联合时频信息和匹配增益的二维匹配滤波特征。同时, 选择卷积神经网络作为回波分类检测器, 基于获取的二维匹配滤波特征区分回波信号和杂波信号。仿真和实验结果表明, 该方法可提升浅海信道下的低虚警回波检测能力, 在1‰虚警率下的海上回波检测率达到91.30%, 相比已有方法提升4%左右。Abstract: To reduce the clutter false alarm in active sonar echo detection, and enhance the echo detection rate while maintaining a low false alarm rate, a classification detection method based on the two-dimensional matching filter (2D-MF) is proposed. This method divides the matched signal into multiple sub-signals with appropriate pulse widths, and the sub-signals are used to respectively perform the matched filtering and extract the 2D-MF features from the active sonar received data. The extracted 2D-MF features utilize the time-frequency information and matching gain simultaneously. The convolutional neural network is then employed as the echo detector, effectively distinguishing between echo signals and clutter signals. Simulation and experimental results demonstrate that this method significantly improves the echo detection rate while maintaining a low false alarm rate in shallow-water channels. Specifically, it achieves an echo detection rate of 91.30% with a false alarm rate of 1‰ for the at-sea measured data, representing an approximate 4% improvement compared to existing methods.