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A Remote Sensing Image Segmentation Model Based on CGAN Combining Multi-scale Contextual Information

机译:基于CGAN组合的多尺度上下文信息的遥感图像分割模型

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In order to extract targets in different scale under complex scene, this paper proposes a remote sensing image segmentation model based on Conditional Generative Adversarial Network (CGAN) combing multi-scale contextual information. This end-to-end model consists of a generative network and a discriminant network. A SegNet model fusing multi-scale contextual information is proposed as the generative network. In order to extract multi-scale contextual information, the multi-scale features of the end pooling feature map in the encoder are extracted using different proportion of dilated convolution. The multi-scale features are further fused with the global feature. The discriminant network is a convolution neural network for two category classification, determines whether the input is a generated result or the ground truth. After alternate adversarial training, the experimental results on a remote sensing road dataset show that the road segmentation results of the proposed model are superior to those of the comparable models in terms of target integrity and details preserving.
机译:为了在复杂场景下的不同规模中提取目标,本文提出了一种基于条件生成的对抗网络(CGAN)的遥感图像分割模型,梳理多尺度上下文信息。该端到端模型包括生成网络和判别网络。提出了SEGNET模型融合多尺度上下文信息作为生成网络。为了提取多尺度上下文信息,使用不同比例的扩张卷积提取编码器中的结束池特征图的多尺度特征。多尺度功能与全局功能进一步融合。判别网络是两个类别分类的卷积神经网络,确定输入是否是生成的结果或地面真理。在备选的逆势训练之后,遥感路数据集的实验结果表明,在目标完整性和细节保存方面,所提出的模型的道路分割结果优于可比较模型的路段。

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