Fine-grained Recognition of Ships Under Complex Sea Conditions

Jiaojiao Ma, Jun-Peng Yu, Hao Yang, Hong Jiang, Wei Li
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Abstract

Abstract For the traditional deep learning cannot solve the fog, coastal background interference, and the difficulty of small ships recognition, a multi-scale deep learning training model is proposed in this paper. Based on Faster R-CNN, this paper uses guided filtering to remove fog, as well as combined with negative sample enhancement learning to train the model, thus solving recognition of ship in complex sea conditions. And with multi-scale training strategy, the multi-scale ship samples are produced and sent to the network for training, so as to solve the problem of small target recognition. The experimental results show that compared with the Faster R-CNN, the precision and recall of our method increase by 6.43% and by 4.68% respectively. It solves the difficulty of ships recognition under complex sea conditions and small ship recognition that cannot be solved by traditional deep learning methods, the trained model has good generalization ability and robustness.
复杂海况下船舶的细粒度识别
摘要针对传统深度学习无法解决雾、海岸背景干扰、小型船舶识别困难等问题,提出了一种多尺度深度学习训练模型。本文在Faster R-CNN的基础上,采用引导滤波去除雾,并结合负样本增强学习对模型进行训练,解决复杂海况下船舶的识别问题。采用多尺度训练策略,生成多尺度船舶样本并将其送入网络进行训练,从而解决小目标识别问题。实验结果表明,与Faster R-CNN相比,本文方法的准确率和召回率分别提高了6.43%和4.68%。解决了传统深度学习方法无法解决的复杂海况下船舶识别和小型船舶识别难题,训练出的模型具有良好的泛化能力和鲁棒性。
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