BFFNet: a bidirectional feature fusion network for semantic segmentation of remote sensing objects

IF 2.2 Q3 COMPUTER SCIENCE, CYBERNETICS International Journal of Intelligent Computing and Cybernetics Pub Date : 2023-08-03 DOI:10.1108/ijicc-03-2023-0053
Yandong Hou, Zhengbo Wu, Xinghua Ren, Kaiwen Liu, Zhengquan Chen
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引用次数: 2

Abstract

PurposeHigh-resolution remote sensing images possess a wealth of semantic information. However, these images often contain objects of different sizes and distributions, which make the semantic segmentation task challenging. In this paper, a bidirectional feature fusion network (BFFNet) is designed to address this challenge, which aims at increasing the accurate recognition of surface objects in order to effectively classify special features.Design/methodology/approachThere are two main crucial elements in BFFNet. Firstly, the mean-weighted module (MWM) is used to obtain the key features in the main network. Secondly, the proposed polarization enhanced branch network performs feature extraction simultaneously with the main network to obtain different feature information. The authors then fuse these two features in both directions while applying a cross-entropy loss function to monitor the network training process. Finally, BFFNet is validated on two publicly available datasets, Potsdam and Vaihingen.FindingsIn this paper, a quantitative analysis method is used to illustrate that the proposed network achieves superior performance of 2–6%, respectively, compared to other mainstream segmentation networks from experimental results on two datasets. Complete ablation experiments are also conducted to demonstrate the effectiveness of the elements in the network. In summary, BFFNet has proven to be effective in achieving accurate identification of small objects and in reducing the effect of shadows on the segmentation process.Originality/valueThe originality of the paper is the proposal of a BFFNet based on multi-scale and multi-attention strategies to improve the ability to accurately segment high-resolution and complex remote sensing images, especially for small objects and shadow-obscured objects.
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BFFNet:一种用于遥感目标语义分割的双向特征融合网络
目的高分辨率遥感图像具有丰富的语义信息。然而,这些图像通常包含不同大小和分布的对象,这使得语义分割任务具有挑战性。本文设计了一个双向特征融合网络(BFFNet)来应对这一挑战,旨在提高对表面物体的准确识别,从而有效地对特殊特征进行分类。设计/方法论/方法BFFNet中有两个主要的关键元素。首先,使用平均加权模块(MWM)来获得主网络中的关键特征。其次,所提出的极化增强分支网络与主网络同时进行特征提取,以获得不同的特征信息。然后,作者在两个方向上融合了这两个特征,同时应用交叉熵损失函数来监控网络训练过程。最后,在波茨坦和瓦欣根两个公开可用的数据集上验证了BFFNet。在本文中,使用定量分析方法从两个数据集上的实验结果表明,与其他主流分割网络相比,所提出的网络分别获得了2–6%的优先性能。还进行了完整的消融实验,以证明网络中元素的有效性。总之,BFFNet已被证明在实现小物体的精确识别和减少阴影对分割过程的影响方面是有效的。独创性/价值本文的独创性是提出了一种基于多尺度和多注意力策略的BFFNet,以提高精确分割高分辨率和复杂遥感图像的能力,特别是对于小物体和阴影遮挡物体。
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来源期刊
CiteScore
6.80
自引率
4.70%
发文量
26
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