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一种用于水下声学目标识别的具有频率和通道优化的高效深度学习方法。

An efficient deep learning approach with frequency and channel optimization for underwater acoustic target recognition.

作者信息

Zeng Di, Yan Shefeng, Yang Jirui, Pan Xianli

机构信息

University of Chinese Academy of Sciences, Beijing, 101408, China.

Chinese Academy of Sciences, Institute of Acoustics, Beijing, 100190, China.

出版信息

Sci Rep. 2025 Jul 28;15(1):27369. doi: 10.1038/s41598-025-12452-2.

Abstract

Ship radiated noise (SRN) recognition is challenging due to environmental noise and the broad frequency range of underwater signals. Existing deep learning models often include irrelevant frequencies and use red, green, and blue (RGB) channel configurations in convolutional networks, which are unsuitable for SRN data and computationally intensive. To address these limitations, we propose FCResNet5, a neural network optimized for SRN classification. FCResNet5 adopts a streamlined architecture that focuses on the critical frequency band and applies frequency channelization to enhance spectral representation. Its compact design achieves greater computational efficiency while maintaining comparable accuracy. Ablation studies confirm the contribution of each component, and comparative results demonstrate that FCResNet5 offers a more efficient alternative to existing models without compromising performance.

摘要

由于环境噪声和水下信号的宽频带范围,舰船辐射噪声(SRN)识别具有挑战性。现有的深度学习模型通常包含不相关的频率,并在卷积网络中使用红、绿、蓝(RGB)通道配置,这不适用于SRN数据且计算量很大。为了解决这些局限性,我们提出了FCResNet5,这是一种针对SRN分类进行优化的神经网络。FCResNet5采用了简化的架构,专注于关键频带,并应用频率通道化来增强频谱表示。其紧凑的设计在保持相当精度的同时实现了更高的计算效率。消融研究证实了每个组件的贡献,比较结果表明FCResNet5在不影响性能的情况下为现有模型提供了更有效的替代方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4949/12301485/9503265c1fc2/41598_2025_12452_Fig1_HTML.jpg

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