Citation: | ZHOU Zhenxian, HONG Feng, XU Weijie, ZHANG Tao, CHEN Feng. Deep Learning-Based Method for Key Signal Recognition during Underwater Explosions[J]. Journal of Unmanned Undersea Systems, 2024, 32(4): 739-748. doi: 10.11993/j.issn.2096-3920.2023-0146 |
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