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Extracting road maps from high-resolution satellite imagery using refined DSE-LinkNet

机译:使用精制DSE-LinkNet提取高分辨率卫星图像的路线图

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摘要

Road detection and extraction have gained momentum in recent past years with crucial applications such as urban planning, autonomous driving, automated map update, providing aid to rescue missions, etc. The current methodologies generate the disconnected road segments, cause boundary loss, and also they are incapable of handling the imbalanced class distribution problems. In this paper, we propose a fully convolutional architecture, named as refined DSE-LinkNet, to extract the connected and precise road maps. We use a pre-trained encoder by combining the layers of the two very efficient and light-weight CNN models: DenseNet and SE-Net that makes the proposed model more expressive with faster convergence. We introduce a new module, Fusion block, in our architecture that enhances its precise localisation as well as classification ability by capturing multilevel as well as multiscale features. To address the imbalanced class distribution problem, a new aggregate loss function is proposed by integrating binary cross-entropy, Jaccard coefficient, and Lovasz sigmoid loss functions. The experiments are performed on a publicly available dataset, DeepGlobe Road Extraction Challenge 2018, to show its efficacy over the D-LinkNet, winner of DeepGlobe Challenge 2018, by achieving IoU of 0.69 with lesser number of parameters and better computational complexity.
机译:道路检测和提取在近年来过去几年中获得了势头,如城市规划,自动驾驶,自动地图更新,提供救援任务的援助等。目前的方法产生了断开连接的道路段,导致界限损失,以及它们无法处理不平衡的类分布问题。在本文中,我们提出了一个完全卷积的架构,命名为精制DSE-LinkNet,以提取连接和精确的路线图。我们通过组合两个非常高效和轻量级CNN型号的层:DENSENET和SE-NET来使用预先训练的编码器:使提出的模型更快地具有更快的收敛性。我们在我们的体系结构中介绍了一个新的模块,融合块,通过捕获多级以及多尺度功能来增强其精确的本地化以及分类能力。为了解决不平衡的类分布问题,通过集成二进制交叉熵,JAccard系数和Lovasz Sigmoid损失函数来提出新的聚合丢失函数。实验是在公开的数据集,DiewGlobe Road Extraction挑战赛2018上进行,以展示2018年的DiewGlobe挑战赛的D-LinkNet获胜者,通过较少数量的参数和更好的计算复杂性。

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