Few-shot Learning with Data Enhancement and Transfer Learning for Underwater Target Recognition

2021 OES China Ocean Acoustics (COA)(2021)

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摘要
Due to the difficulty of acquiring underwater target data, the recognition of small samples of underwater acoustic targets has always been a difficult problem in the field of underwater acoustics. To solve this problem, this paper proposes a few-shot learning method based on data enhancement and transfer learning for underwater target recognition. This paper takes two-dimensional time-frequency spectrum as input, and uses a variety of data enhancement schemes, combined with transfer learning methods to achieve target classification. In terms of experiments, we used hydrophones to collect 3 times data in different sea areas as a data set for verification, including 10 types of targets. The experimental results show that our system could achieve the accuracy of 0.82.
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关键词
underwater acoustic target recognition,data augmentation,convolutional neural network,transfer learning
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