This letter investigates fully convolutional networks (FCNs) for the detection of informal settlements in very high resolution (VHR) satellite images. Informal settlements or slums are proliferating in developing countries and their detection and classification provides vital information for decision making and planning urban upgrading processes. Distinguishing different urban structures in VHR images is challenging because of the abstract semantic definition of the classes as opposed to the separation of standard land-cover classes. This task requires extraction of texture and spatial features. To this aim, we introduce deep FCNs to perform pixel-wise image labeling by automatically learning a higher level representation of the data. Deep ...
Impervious surfaces play an important role in urban planning and sustainable environmental managemen...
Along with rapid urbanization, the growth and persistence of slums is a global challenge. While remo...
The availability of high-resolution remote sensing (HRRS) data has opened up the possibility for new...
Information about the location and extent of informal settlements is necessary to guide decision mak...
Land cover Classified maps obtained from deep learning methods such as Convolutional neural networks...
Land cover Classified maps obtained from deep learning methods such as Convolutional neural networks...
Informal settlements are the result of the continuing rapid growth of mega cities, especially in the...
In the cities of the Global South, slum settlements are growing in size and number, but their locati...
Remotely sensed images are used for many purposes in today’s world. In this paper, we explore the po...
National audienceIn this paper, we compare the performance of different deep-learning architectures ...
In many cities of the Global South, informal and deprived neighborhoods, also commonly called slums,...
New challenges in remote sensing require the design of a pixel classification method that...
Currently about one-quarter of the world’s urban population live in slums. Slums are defined by the ...
Urban areas are rapidly expanding in developing countries. One of goals of the United Nations Human ...
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT REQUEST OF AUTHOR.] This thesis investigates how...
Impervious surfaces play an important role in urban planning and sustainable environmental managemen...
Along with rapid urbanization, the growth and persistence of slums is a global challenge. While remo...
The availability of high-resolution remote sensing (HRRS) data has opened up the possibility for new...
Information about the location and extent of informal settlements is necessary to guide decision mak...
Land cover Classified maps obtained from deep learning methods such as Convolutional neural networks...
Land cover Classified maps obtained from deep learning methods such as Convolutional neural networks...
Informal settlements are the result of the continuing rapid growth of mega cities, especially in the...
In the cities of the Global South, slum settlements are growing in size and number, but their locati...
Remotely sensed images are used for many purposes in today’s world. In this paper, we explore the po...
National audienceIn this paper, we compare the performance of different deep-learning architectures ...
In many cities of the Global South, informal and deprived neighborhoods, also commonly called slums,...
New challenges in remote sensing require the design of a pixel classification method that...
Currently about one-quarter of the world’s urban population live in slums. Slums are defined by the ...
Urban areas are rapidly expanding in developing countries. One of goals of the United Nations Human ...
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT REQUEST OF AUTHOR.] This thesis investigates how...
Impervious surfaces play an important role in urban planning and sustainable environmental managemen...
Along with rapid urbanization, the growth and persistence of slums is a global challenge. While remo...
The availability of high-resolution remote sensing (HRRS) data has opened up the possibility for new...