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基于水声环境空间中多模态深度融合模型的目标识别方法研究
Research on of underwater target recognition based on the multi-model information fusion with Deep-learning-based multimodal learning model in three-dimensional acoustic map of underwater acoustical environment
投稿时间:2019-08-29  修订日期:2019-10-15
DOI:
中文关键词:  水下目标识别  多模态  水声环境  深度模型  核方法
英文关键词:underwater target dentification  multi-modal  underwater acoustical environment  deep-learning-based multimodal learning model  kernel method
基金项目:国家海洋技术中心创新基金重点项目
作者单位邮编
李琦* 国家海洋技术中心 300112
孙桂玲 南开大学 
黄翠 国家海洋技术中心 
刘颉 国家海洋技术中心 
常哲 国家海洋技术中心 
于金花 国家海洋技术中心 
文洪涛 自然资源部第三海洋研究所 
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中文摘要:
      随着对水下目标特性研究的深入和声学探测技术的发展,基于单模态的阵列式信息融合或基于空间信息的分布式信息融合的水下目标识别方法研究已有一定成果,但针对复杂海况导致单一物理场或单一融合层次的系统识别性能提高有限等方面影响的水下目标识别方法研究还有所不足,因此,开展基于多模态深度融合模型的水下目标识别方法研究可利用模态互补,共享信息而提升识别率。本文在国内外研究基础上,深入研究基于到达时差法和多模态核方法组合的检测方法,初步形成基于水声环境空间中多模态深度融合模型的识别框架,在此基础上,设计新型基于海底基站的被动识别系统,该系统同步记录和由位置等组成的时间序列标记声、磁和压数据,可实现高精度、高分辨率的识别。本文的研究可满足未来海洋观测对高性能水下目标探测、定位和跟踪系统的迫切需要,为海洋安全监管、海洋突发事件应急响应等方面提供新的技术手段和科学参考。
英文摘要:
      As the analytic study of underwater target characteristics becomes more intensive and the acoustic detection technology becomes more mature, several achievements have been attained in the field of detection and recognition modeling for underwater target based on single modal information fusion of sensor array and space information fusion of the distributed sensor array. However, only a few studies on multi-modal or deep multimodal fusion model of underwater target detection and identification methods, of which the environmental factors and many interference sources may lead to detection system performance, have been conducted. Conducting a study of detection and recognition methods of underwater target based on the deep multimodal data fusion model and a design of the measuring technique based on the seabed-base monitoring platform presents practical significance. This research make full use of the complementary relationship between acoustic modes, magnetics modes and water pressure modes, and share information to improve the recognition rate. The multi-modal kernel method for activity detection of underwater targets and the recognition model based on the multi-model information hybrid fusion with Deep-learning-based multimodal (deep multimodal) learning model in three-dimensional space in underwater acoustical environment and is developed by referencing relevant study results in the country and abroad. The algorithm and method will be optimized, and a Passive Measurement System will be designed according to the features of the model. The device obtains the best of the underwater acoustic and magnetic and pressure signals for analysis of the characteristic parameters of underwater targets. The device also tests the validity of the model and the method using offshore test data. The underwater targets are detected and recognized precisely in experimental pool. The device can offer appropriate measurement data and a new measuring technology for studies on detecting and positioning and the tracking of underwater targets, and provide new technical means and scientific reference for ocean safety supervision, exploration of ocean resources, ocean disaster pre-warning, etc.
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