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Multi-U-Net: Residual Module under Multisensory Field and Attention Mechanism Based Optimized U-Net for VHR Image Semantic Segmentation

机译:多型网:基于多思科领域的残差模块和基于VHR图像语义分割的优化U-Net

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摘要

As the acquisition of very high resolution (VHR) images becomes easier, the complex characteristics of VHR images pose new challenges to traditional machine learning semantic segmentation methods. As an excellent convolutional neural network (CNN) structure, U-Net does not require manual intervention, and its high-precision features are widely used in image interpretation. However, as an end-to-end fully convolutional network, U-Net has not explored enough information from the full scale, and there is still room for improvement. In this study, we constructed an effective network module: residual module under a multisensory field (RMMF) to extract multiscale features of target and an attention mechanism to optimize feature information. RMMF uses parallel convolutional layers to learn features of different scales in the network and adds shortcut connections between stacked layers to construct residual blocks, combining low-level detailed information with high-level semantic information. RMMF is universal and extensible. The convolutional layer in the U-Net network is replaced with RMMF to improve the network structure. Additionally, the multiscale convolutional network was tested using RMMF on the Gaofen-2 data set and Potsdam data sets. Experiments show that compared to other technologies, this method has better performance in airborne and spaceborne images.
机译:随着对非常高分辨率(VHR)图像的收购变得更容易,VHR图像的复杂特性对传统机器学习语义分割方法构成了新的挑战。作为优异的卷积神经网络(CNN)结构,U-Net不需要手动干预,并且其高精度特征广泛用于图像解释。然而,作为端到端的完全卷积网络,U-Net没有从全面探索足够的信息,并且仍然有改进的余地。在这项研究中,我们构建了一个有效的网络模块:在多思源字段(RMMF)下的剩余模块,以提取目标的多尺度特征和注意机制以优化特征信息。 RMMF使用并行卷积层来学习网络中不同尺度的特征,并在堆叠层之间添加快捷方式连接以构建残差块,将低级详细信息与高电平语义信息组合。 RMMF是通用和可扩展的。 U-Net网络中的卷积层被RMMF替换为改善网络结构。此外,使用高分辨率卷积网络在高芬-2数据集和Potsdam数据集上使用RMMF进行测试。实验表明,与其他技术相比,这种方法在空中和星载图像中具有更好的性能。

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