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Building outline delineation: From aerial images to polygons with an improved end-to-end learning framework

机译:构建大纲描绘:从空中图像到多边形,具有改进的端到端学习框架

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Deep learning methods based upon convolutional neural networks (CNNs) have demonstrated impressive performance in the task of building outline delineation from very high resolution (VHR) remote sensing (RS) imagery. In this paper, we introduce an improved method that is able to predict regularized building outline in a vector format within an end-to-end deep learning framework. The main idea of our framework is to learn to predict the location of key vertices of the buildings and connect them in sequence. The proposed method is based on PolyMapper. We upgrade the feature extraction by introducing global context and boundary refinement blocks and add channel and spatial attention modules to improve the effectiveness of the detection module. In addition, we introduce stacked conv-GRU to further preserve the geometric relationship between vertices and accelerate inference. We tested our method on two large-scale VHR-RS building extraction dataset. The results on both COCO and PoLiS metrics demonstrate better performance compared with Mask R-CNN and PolyMapper. Specifically, we achieve 4.2 mask mean average precision (mAP) and 3.7 mean average recall (mAR) absolute improvements compared to PolyMapper. Also, the qualitative comparison shows that our method significantly improves the instance segmentation of buildings of various shapes.
机译:基于卷积神经网络(细胞神经网络)深的学习方法已经在从非常高的分辨率(VHR)遥感(RS)影像建筑物轮廓划定的任务表现出骄人的业绩。在本文中,我们引入能够结束到终端的深度学习框架内预测正规化建设纲要在矢量格式的改进方法。我们的框架的主要思想是要学会预测建筑的关键顶点的位置,并将它们按顺序连接。该方法是基于PolyMapper。我们升级通过引入全球背景和边界细化块,并添加通道和空间注意的模块以提高检测模块的效率特征提取。此外,我们引入堆叠CONV-GRU进一步保持顶点之间的几何关系,加快推理。我们两个大型VHR-RS建筑物提取数据集测试了我们的方法。用面膜R-CNN和PolyMapper比较两个COCO和城邦指标的结果表明更好的性能。具体来说,我们达到4.2掩模值平均精度(MAP)和3.7值平均召回(MAR)相比PolyMapper绝对改进。此外,定性比较表明,我们的方法显著提高了各种形状的建筑实例分割。

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