Segmentation networks reinforced with attribute profiles for large scale land-cover map production

E. Aptoula, F. Kahraman, Gökhan Özbulak, S. Aydemir, M. Imamoglu, A. Sofu, Ismail Yilmaz
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引用次数: 1

Abstract

Segmentation networks have proven to be popular tools for large scale pixel-wise remote sensing image classification as they can deal with wide spatial areas efficiently, as opposed to convolutional neural networks trained with pixel centered patches. However, they are often criticized in terms of spatial consistency. As such, they have received various extensions through the last few years, in the form of dilated convolutions and skip connections and more. In this paper, we address the same issue by feeding attribute filtered images, that contain inherently a multiscale hierarchical representation of the underlying image, as input to a segmentation network, in an effort to both accelerate convergence and render easier the feature learning task of the bottom layers. We validate our approach through the production of land-use and land-cover maps for a large area of Turkey using Sentinel 2 multispectral images and ground truth from the Copernicus Land Monitoring Service.
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基于属性剖面的大比例尺土地覆盖图分割网络
与使用以像素为中心的补丁训练的卷积神经网络相比,分割网络可以有效地处理宽空间区域,已被证明是大规模逐像素遥感图像分类的流行工具。然而,它们在空间一致性方面经常受到批评。因此,它们在过去几年中得到了各种扩展,以扩展卷积和跳过连接等形式。在本文中,我们通过提供属性过滤图像来解决相同的问题,这些图像本身包含底层图像的多尺度分层表示,作为分割网络的输入,以加速收敛并使底层的特征学习任务变得更容易。我们通过使用Sentinel 2多光谱图像和来自哥白尼土地监测服务的地面真相,为土耳其的大片地区制作土地利用和土地覆盖地图,验证了我们的方法。
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