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Unsupervised Deep Feature Learning for Urban Village Detection from High-Resolution Remote Sensing Images

机译:从高分辨率遥感图像的城市村庄检测无监督的深度特色

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摘要

Urban villages (UVs) are a typical informal settlement in China resulting from the rapid urbanization in recent decades. Their formation and demolition are attracting increasing interest. In the remote sensing community, UVs have been detected based on hand-crafted features. However, the hand-crafted features just consider one or several characteristics of UVs, and ignore many effective cues hiding in the image. Recently, deep learning has been used to automatically learn suitable feature representations from a huge amount of data, without much expertise or effort in designing features. Motivated by its great success, this paper aims to use deep learning for detecting UVs. Because of the scarce labeled samples, this paper presents a novel unsupervised deep learning method to learn a data-driven feature. Experiments show the data-driven feature obtained with the proposed method outperform the existing unsupervised deep neural networks, and achieve results comparable to that obtained using the best hand-crafted features.
机译:城市村庄(UVS)是近几十年来源的中国典型的非正式解决方案。他们的形成和拆迁正在吸引越来越兴趣。在遥感社区中,基于手工制作的功能检测到UV。然而,手工制作的功能只是考虑UV的一个或多个特征,并忽略掩藏图像中的许多有效提示。最近,深入学习已被用于自动从大量数据中学习合适的特征表示,而无需设计特征的专业知识或努力。凭借其巨大成功,本文旨在利用深入学习来检测紫外线。由于稀缺标记的样本,本文提出了一种新颖的无监督的深度学习方法,用于学习数据驱动功能。实验显示使用所提出的方法获得的数据驱动特征优于现有的无监督的深神经网络,并实现了与使用最佳手工制作特征获得的结果相当的结果。

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