首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Semantic segmentation of slums in satellite images using transfer learning on fully convolutional neural networks
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Semantic segmentation of slums in satellite images using transfer learning on fully convolutional neural networks

机译:完全卷积神经网络转移学习的卫星图像中贫民窟的语义分割

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摘要

Unprecedented urbanization in particular in countries of the global south result in informal urban development processes, especially in mega cities. With an estimated 1 billion slum dwellers globally, the United Nations have made the fight against poverty the number one sustainable development goal. To provide better infrastructure and thus a better life to slum dwellers, detailed information on the spatial location and size of slums is of crucial importance. In the past, remote sensing has proven to be an extremely valuable and effective tool for mapping slums. The nature of used mapping approaches by machine learning, however, made it necessary to invest a lot of effort in training the models. Recent advances in deep learning allow for transferring trained fully convolutional networks (FCN) from one data set to another. Thus, in our study we aim at analyzing transfer learning capabilities of FCNs to slum mapping in various satellite images. A model trained on very high resolution optical satellite imagery from QuickBird is transferred to Sentinel-2 and TerraSAR-X data. While free-of-charge Sentinel 2 data is widely available, its comparably lower resolution makes slum mapping a challenging task. TerraSAR-X data on the other hand, has a higher resolution and is considered a powerful data source for infra-urban structure analysis. Due to the different image characteristics of SAR compared to optical data, however, transferring the model could not improve the performance of semantic segmentation but we observe very high accuracies for mapped slums in the optical data: QuickBird image obtains 86-88% (positive prediction value and sensitivity) and a significant increase for Sentinel-2 applying transfer learning can be observed (from 38 to 55% and from 79 to 85% for PPV and sensitivity, respectively). Using transfer learning proofs extremely valuable in retrieving information on small-scaled urban structures such as slum patches even in satellite images of decametric resolution.
机译:特别是在全球南方国家的前所未有的城市化,在非正式的城市发展过程中,特别是在大型城市。据估计,全球10亿贫民窟居民,联合国使扶贫作出斗争,这是一个可持续发展目标。为了提供更好的基础设施,从而为贫民窟居民提供更好的生命,有关空间位置和贫民窟大小的详细信息至关重要。在过去,遥感已被证明是一种非常有价值和有效的映射贫民窟的工具。然而,通过机器学习的使用映射方法的性质使得有必要在培训模型方面投入很多努力。深度学习的最新进展允许将训练有素的完全卷积网络(FCN)从一个数据传输到另一个数据。因此,在我们的研究中,我们的目的是分析FCN的转移学习能力在各种卫星图像中的贫民窟映射。从QuickBird的非常高分辨率光学卫星图像培训的模型被传送到Sentinel-2和Terrasar-X数据。虽然自由充电的哨兵2数据广泛可用,但其相对较低的分辨率使得贫民窟映射有挑战性的任务。另一方面,Terrasar-X数据具有更高的分辨率,并且被认为是针对城市结构分析的强大数据源。然而,由于SAR的不同图像特征与光学数据相比,传输模型无法提高语义分割的性能,但我们观察光学数据中的映射贫民窟的非常高的精度:QuickBird图像获得86-88%(阳性预测可以观察到Sentinel-2施用转移学习的价值和敏感性)和PPV和敏感性的38%至55%,分别为38%至55%。使用转移学习证明,即使在欺诈分辨率的卫星图像中,也可以在诸如贫民窟贴片之类的小尺寸城市结构的信息中非常有价值。

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