首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >BUILDING OUTLINE DELINEATION: FROM VERY HIGH RESOLUTION REMOTE SENSING IMAGERY TO POLYGONS WITH AN IMPROVED END-TO-END LEARNING FRAMEWORK
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BUILDING OUTLINE DELINEATION: FROM VERY HIGH RESOLUTION REMOTE SENSING IMAGERY TO POLYGONS WITH AN IMPROVED END-TO-END LEARNING FRAMEWORK

机译:构建大纲描绘:从非常高分辨率的遥感图像到多边形,具有改进的端到端学习框架

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Deep learning methods based on Fully convolution networks (FCNs) have shown an impressive progress in building outline delineation from very high resolution (VHR) remote sensing (RS) imagery. Common issues still exist in extracting precise building shapes and outlines, often resulting in irregular edges and over smoothed corners. In this paper, we use PolyMapper, a recently introduced deep-learning framework that is able to predict object outlines in a vector representation directly. We have introduced two main modifications to this baseline method. First, we introduce EffcientNet as backbone feature encoder to our network, which uses compound coefficient to scale up all dimensions of depth/width/resolution uniformly, to improve the processing speed with fewer parameters. Second, we integrate a boundary refinement block (BRB) to strengthen the boundary feature learning and to further improve the accuracy of corner prediction. The results demonstrate that the end-to-end learnable model is capable of delineating polygons of building outlines that closely approximate the structure of reference labels. Experiments on the crowdAI building instance segmentation datasets show that our model outperforms PolyMapper in all COCO metrics, for instance showing a 0.13 higher mean Average Precision (AP) value and a 0.60 higher mean Average Recall value. Also qualitative results show that our method segments building instances of various shapes more accurately.
机译:基于完全卷积网络(FCNS)的深度学习方法显示了从非常高分辨率(VHR)遥感(RS)图像的大纲描绘中令人印象深刻的进展。在提取精确的建筑物和轮廓中仍然存在常见问题,通常导致不规则的边缘和平滑的角落。在本文中,我们使用Polymapper,最近推出的深度学习框架能够直接预测向量表示中的对象轮廓。我们对此基线方法推出了两个主要修改。首先,我们将EffcientNet作为骨干功能编码器引入我们的网络,该网络使用化合物系数均匀地扩大了深度/宽度/分辨率的所有尺寸,以提高具有较少参数的处理速度。其次,我们集成了边界改进块(BRB)以加强边界特征学习,进一步提高角预测的准确性。结果表明,端到端的学习模型能够描绘建筑物轮廓的多边形,其密切地近似参考标签的结构。 Crowdai Building实例分割数据集的实验表明,我们的模型优于所有COCO度量中的聚合物,例如显示0.13的平均平均精度(AP)值,0.60平均召回值。定性结果表明,我们的方法分段更准确地建立各种形状的情况。

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