基于关注特征和增强特征融合的细粒度河冰语义分割

Rui Wang, Chengyu Zheng, Yanru Jiang, Zhao-Hui Wang, Min Ye, Chenglong Wang, Ning Song, Jie Nie
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引用次数: 0

摘要

冻冰和锚冰的语义分割对于寒区河流管理、船舶航行和冰害预报具有重要意义。特别是将带沙锚冰与带沙锚冰区分开来,可以提高河流输沙能力的估算精度。基于深度学习的河冰语义分割方法虽然取得了很高的预测精度,但仍然存在特征提取不足的问题。为了解决这一问题,我们提出了一种基于关注特征和增强特征融合的细粒度河冰语义分割(FGRIS)方法来应对这些挑战。首先,我们提出了一种双注意机制(Dual-Attention Mechanism, DAM)方法,该方法结合通道注意特征和位置注意特征来提取更全面的语义特征。然后,我们提出了一种新的分支特征融合(BFF)模块,以弥合高级特征语义特征和低级语义特征之间的语义特征差距,该模块具有不同尺度的鲁棒性。在Alberta河冰分割数据集上的实验结果表明了该方法的优越性。
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A Fine-Grained River Ice Semantic Segmentation based on Attentive Features and Enhancing Feature Fusion
The semantic segmentation of frazil ice and anchor ice is of great significance for river management, ship navigation, and ice hazard forecasting in cold regions. Especially, distinguishing frazil ice from sediment-carrying anchor ice can increase the estimation accuracy of the sediment transportation capacity of the river. Although the river ice semantic segmentation methods based on deep learning has achieved great prediction accuracy, there is still the problem of insufficient feature extraction. To address this problem, we proposed a Fine-Grained River Ice Semantic Segmentation (FGRIS) based on attentive features and enhancing feature fusion to deal with these challenges. First, we propose a Dual-Attention Mechanism (DAM) method, which uses a combination of channel attention features and position attention features to extract more comprehensive semantic features. Then, we proposed a novel Branch Feature Fusion (BFF) module to bridge the semantic feature gap between high-level feature semantic features and low-level semantic features, which is robust to different scales. Experimental results conducted on Alberta River Ice Segmentation Dataset demonstrate the superiority of the proposed method.
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