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Illegal Constructions Detection in Remote Sensing Images based on Multi-scale Semantic Segmentation

机译:基于多尺度语义分割的遥感影像非法构造检测

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Urban planning is an important application field of remote sensing images. Using semantic segmentation to deal with this matter shows great potential. However, there is still a long way to go to achieve complex semantic segmentation. To improve the learning ability of complex rules in a semantic segmentation network, and can explicitly indicate the context relationship between categories. This paper proposes a new convolution structure based on the current semantic segmentation network with the encoding-decoding structure. The traditional multi-layer convolution structure is replaced by a new multi-scale convolution parallel structure. In addition, a full connection conditional random field under certain rules are added to constrain the segmentation results. For the segmentation accuracy, we first compare it with the current segmentation network on a open datasets. And it has shown good practicality in detecting illegal constructions in Jiangxi province, China.
机译:城市规划是遥感影像的重要应用领域。使用语义分割来处理这个问题显示出巨大的潜力。但是,要实现复杂的语义分割还有很长的路要走。在语义分割网络中提高复杂规则的学习能力,并可以明确指示类别之间的上下文关系。本文提出了一种基于当前语义分割网络的编码-解码结构的卷积结构。传统的多层卷积结构被新的多尺度卷积并行结构取代。另外,在某些规则下添加了全连接条件随机字段以约束分割结果。对于分割精度,我们首先将其与开放数据集上的当前分割网络进行比较。在检测江西省的违法建筑方面具有良好的实用性。

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