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Comparison Between UNet, Modified UNet and Dense-Attention Network (DAN) for Building Extraction from TripleSat Imagery

机译:UNET,改进的UNET和密集网络(DAN)与TRIPLESAT图像提取的比较

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Building extraction from high resolution remote sensing imagery is of great importance for land use analysis, urban planning, and many other applications. Notably convolutional neural networks (CNN) have shown significant advantage over traditional methods for this task. Among various CNN models, UNet has gained popularity due to its simplicity, efficiency and robustness while many modified versions have been proposed. More recently, a model called the dense attention network (DAN) based on DenseNets and attention mechanism was proposed. This model achieved good performance in building extraction from very high resolution imagery. Based on these developments, in this paper, we compared three architectures (UNet, modified UNet (with residual blocks and recurrent feature), and DAN) for building extraction in Kuala Lumpur, Malaysia using 0.8m TripleSat imagery. For the modified UNet. skip connections were implemented in each encoder blocks to mix features of different levels. Output was multiplied to input and feed to the same UNet again. The comparison results showed that the modified UNet achieved the highest Fl-score. while the DAN achieved average higher Fl-score than the UNet. But DAN had the highest accuracy for validation patches with large buildings.
机译:高分辨率遥感图像的建筑提取对于土地利用分析,城市规划和许多其他应用具有重要意义。尤其是卷积神经网络(CNN)对这项任务的传统方法具有显着的优势。在各种CNN模型中,UNET由于其简单,效率和鲁棒性而受到普及,而提出了许多修改的版本。最近,提出了一种基于DENSENET和注意机制的称为密集关注网络(DAN)的模型。该模型在高分辨率图像中建立提取方面取得了良好的性能。在本文的基础上,我们将三个架构(UNET,修饰的UNET(与残留块(带有残留块和反复出现)和丹)进行了比较,用于在马来西亚吉隆坡的建筑物提取,使用0.8M三普拉斯特图。对于改进的杂志。在每个编码器块中实现了跳过连接,以混合不同级别的功能。输出乘以输入并再次输入和馈送到同一缺陷。比较结果表明,修饰的UNET达到了最高的变量。虽然DAN实现了比UNET的平均水平更高。但丹有大型建筑物的验证补丁是最高的准确性。

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