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中文核心期刊

基于模型的水声目标定位与识别技术研究进展

Research progress on model-based underwater acoustic target localization and recognition technology

  • 摘要: 水声目标定位与识别是是声呐设备的核心功能, 也是水声信号处理的重要研究方向。长久以来, 海洋物理模型是支撑目标定位与识别的核心, 目标定位技术以提升宽容性为目标, 从匹配场处理、匹配模处理、模基信号处理发展至利用海洋声场特征的目标定位技术; 目标识别技术则聚焦于挖掘具有良好可分性、泛化性和环境宽容性的水下目标特征。近年来, 在大数据的支撑下, 以深度学习为代表的人工智能飞速发展, 为水声目标定位与识别提供了新的技术路径。深度学习方法能够有效应对环境不确定性和弱目标定位难题, 突破传统方法的局限, 并在复杂场景下的目标识别方面展现出强大的应用潜力。定位与识别技术本身存在内在关联性, 精准的定位信息可为目标识别提供空间约束, 可靠的识别结果也可反馈优化定位结果, 未来的研究重点可着眼于将定位与识别技术有机结合, 同时推动海洋物理模型与深度学习模型的优势整合与协同优化, 从而全面提升实际应用条件下的声呐目标定位与识别性能。

     

    Abstract: Underwater acoustic target localization and recognition are core functions of sonar equipment and pivotal research directions in underwater acoustic signal processing. For a long time, oceanographic physical models have been central to target localization and recognition. Target localization technology has evolved with the goal of enhancing robustness, progressing from matched field processing and matched mode processing to mode-based signal processing, and further advancing to techniques utilizing ocean acoustic field characteristics. Target recognition technology, on the other hand, has focused on extracting features of underwater targets that exhibit strong separability, generalizability, and environmental adaptability. In recent years, artificial intelligence, particularly deep learning, have rapidly advanced empowered by big data, providing new technical approaches to underwater acoustic target localization and recognition. Deep learning effectively addresses environmental uncertainties and the challenges of weak target localization, overcoming the limitations of traditional human expertise and shows significant potential in tackling underwater target recognition under practical complex scenarios. Notably, localization and recognition technologies are inherently interrelated. Precise localization information can provide spatial constraints for target recognition, while reliable recognition results can, in turn, refine localization accuracy, creating a natural synergistic relationship. Therefore, future research should focus on integrating localization and recognition technologies to mutually enhance each other, while promoting the complementary and collaborative development of oceanographic physical models and deep learning models. This will ultimately lead to a comprehensive improvement in the performance of sonar systems under practical application conditions.

     

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