Overview of research on marine target recognition

This paper introduces the latest research progress of marine target recognition technology which based on three detection methods: radar, infrared, and visible light. It also compares the advantages and disadvantages of different technical means, and summarizes the current common ideas for solving target recognition problems. The results show that the selection of the detection method needs to be considered according to the actual application background, and the specific algorithm to be used needs to be determined by the difference between the target feature and the background feature.

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