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arxiv 2304.11907 v1 pith:ABG3WMP6 submitted 2023-04-24 cs.LG cs.SDeess.AS

Advancing underwater acoustic target recognition via adaptive data pruning and smoothness-inducing regularization

classification cs.LG cs.SDeess.AS
keywords dataregularizationsignalsacousticexperimentsperiodicpruningrecognition
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Underwater acoustic recognition for ship-radiated signals has high practical application value due to the ability to recognize non-line-of-sight targets. However, due to the difficulty of data acquisition, the collected signals are scarce in quantity and mainly composed of mechanical periodic noise. According to the experiments, we observe that the repeatability of periodic signals leads to a double-descent phenomenon, which indicates a significant local bias toward repeated samples. To address this issue, we propose a strategy based on cross-entropy to prune excessively similar segments in training data. Furthermore, to compensate for the reduction of training data, we generate noisy samples and apply smoothness-inducing regularization based on KL divergence to mitigate overfitting. Experiments show that our proposed data pruning and regularization strategy can bring stable benefits and our framework significantly outperforms the state-of-the-art in low-resource scenarios.

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