Detection of Informal Graveyards in Lima using Fully Convolutional Network with VHR Images

H. Debray, M. Kuffer, C. Persello, C. Klaufus, K. Pfeffer
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引用次数: 1

Abstract

Lima is facing rapid urban growth, including a rapid expansion of informal areas, mainly taking place within three peripheral cones. Most of the studies on that subject focused in general on informal settlements. Yet in this paper, we focus on two different informal types, graveyards and housing. They are experiencing complex, intertwined development dynamics due to a lack of land for housing and burials, causing social and public health problems. Housing invasions on burial grounds have never been systematically investigated. Yet, while challenging due to their morphological similarity, the detection of boundaries between graveyards and neighbouring and sometimes invading informal housing is essential, e.g., to prevent the spread of diseases. This study aims to distinguish those similar urban structures of which the visual features are very alike (e.g., rectangular shapes, same colours, organic organization). We used state-of-the-art Fully Convolutional Networks (FCNs) with dilated convolution of increasing spatial kernels to acquire features of deep level of abstraction on Pleiades satellites images. We found that such neural networks can reach a good level in mapping both informal developments with a F1-score of 0.819. Effective monitoring of such developments is important to inform planning and decision-making processes to allow interventions at critical locations.
利用VHR图像的全卷积网络检测利马的非正式墓地
利马正面临着快速的城市增长,包括非正式地区的迅速扩张,主要发生在三个外围锥体内。关于这个问题的大多数研究一般集中在非正式住区。然而,在本文中,我们关注的是两种不同的非正式类型,墓地和住房。由于缺乏住房和墓地用地,他们正在经历复杂、相互交织的发展动态,造成社会和公共卫生问题。从来没有系统地调查过对墓地的住房入侵。然而,虽然由于形态上的相似性而具有挑战性,但检测墓地与邻近的有时入侵的非正式住房之间的边界至关重要,例如,防止疾病传播。本研究旨在区分那些视觉特征非常相似的相似城市结构(如矩形、相同颜色、有机组织)。我们使用最先进的全卷积网络(fcn),增加空间核的扩展卷积,以获取昴宿星团卫星图像的深层抽象特征。我们发现,这种神经网络在映射非正式发展方面达到了很好的水平,f1得分为0.819。有效监测这种事态发展对规划和决策过程提供信息,以便在关键地点进行干预是很重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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