Building extraction from remote sensing data plays an important role in urban planning, disaster management, navigation, updating geographic databases, and several other geospatial applications. Even though significant research has been carried out for more than two decades, the success of automatic building extraction and modeling is still largely impeded by scene complexity, incomplete cue extraction, and sensor dependency of data. Most recently, deep neural networks (DNN) have been widely applied for high classification accuracy in various areas including land-cover and land-use classification. Therefore, intelligent and innovative algorithms are needed for the success of automatic building extraction and modeling. This Special Issue foc...
As data science comes to buildings, the promise of using machine learning and novel sources of data ...
Building information extraction and reconstruction from satellite images is an essential task for ma...
Shrestha, S., & Vanneschi, L. (2018). Improved fully convolutional network with conditional random f...
Automatic extraction of buildings from remote sensing images is significant to city planning, popula...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
Utilizing high-resolution remote sensing images for earth observation has become the common method o...
The complexity and diversity of buildings make it challenging to extract low-level and high-level fe...
Traditional building extraction from very high resolution remote sensing optical imagery is limited ...
Building extraction has attracted considerable attention in the field of remote sensing image analys...
Deep learning (DL) shows remarkable performance in extracting buildings from high resolution remote ...
Building extraction from remotely sensed imagery plays an important role in urban planning, disaster...
Building extraction from remotely sensed imagery plays an important role in urban planning, disaster...
Advances in machine learning and computer vision, combined with increased access to unstructured dat...
Automatic extraction of buildings from remote sensing imagery plays a significant role in many appli...
As data science comes to buildings, the promise of using machine learning and novel sources of data ...
As data science comes to buildings, the promise of using machine learning and novel sources of data ...
Building information extraction and reconstruction from satellite images is an essential task for ma...
Shrestha, S., & Vanneschi, L. (2018). Improved fully convolutional network with conditional random f...
Automatic extraction of buildings from remote sensing images is significant to city planning, popula...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
Utilizing high-resolution remote sensing images for earth observation has become the common method o...
The complexity and diversity of buildings make it challenging to extract low-level and high-level fe...
Traditional building extraction from very high resolution remote sensing optical imagery is limited ...
Building extraction has attracted considerable attention in the field of remote sensing image analys...
Deep learning (DL) shows remarkable performance in extracting buildings from high resolution remote ...
Building extraction from remotely sensed imagery plays an important role in urban planning, disaster...
Building extraction from remotely sensed imagery plays an important role in urban planning, disaster...
Advances in machine learning and computer vision, combined with increased access to unstructured dat...
Automatic extraction of buildings from remote sensing imagery plays a significant role in many appli...
As data science comes to buildings, the promise of using machine learning and novel sources of data ...
As data science comes to buildings, the promise of using machine learning and novel sources of data ...
Building information extraction and reconstruction from satellite images is an essential task for ma...
Shrestha, S., & Vanneschi, L. (2018). Improved fully convolutional network with conditional random f...