Automated approaches to building detection in multi-source aerial data are important in many applications, including map updating, city modeling, urban growth analysis and monitoring of informal settlements. This paper presents a comparative analysis of different methods for automated building detection in aerial images and laser data at different spatial resolutions. Five methods are tested in two study areas using features extracted at both pixel level and object level, but with the strong prerequisite of using the same training set for all methods. The evaluation of the methods is based on error measures obtained by superimposing the results on a manually generated reference map of each area. The results in both study areas show a bett...
In this work, we focus on the detection of buildings, by combining information from aerial images an...
For more than two decades, many efforts have been made to develop methods for extracting urban objec...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...
Automated approaches to building detection in multi-source aerial data are important in many applica...
Automatic building detection has been a hot topic since the early 1990’s. Early approaches were base...
Automated approaches to building detection are of great importance in a number of different applicat...
In this paper, we describe the evaluation of a method for building detection by the Dempster-Shafer ...
The problem of building detection in multi-source aerial data has a large variety of applications fr...
In this paper, two main approaches for automatic building detection and localization using high spat...
There is currently high interest in developing automated methods to assist the updating of map datab...
An approach and strategy for automatic detection of buildings from aerial images using combined imag...
Four different variants of building detection are presented. Each variant has a different workflow a...
Abstract: In this paper, two main approaches for automatic building detection and localization using...
Original scientific paper In this work, an automated approach for building detection using airborne ...
In this paper, we examine the use of machine learning to improve a rooftop detection process, which ...
In this work, we focus on the detection of buildings, by combining information from aerial images an...
For more than two decades, many efforts have been made to develop methods for extracting urban objec...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...
Automated approaches to building detection in multi-source aerial data are important in many applica...
Automatic building detection has been a hot topic since the early 1990’s. Early approaches were base...
Automated approaches to building detection are of great importance in a number of different applicat...
In this paper, we describe the evaluation of a method for building detection by the Dempster-Shafer ...
The problem of building detection in multi-source aerial data has a large variety of applications fr...
In this paper, two main approaches for automatic building detection and localization using high spat...
There is currently high interest in developing automated methods to assist the updating of map datab...
An approach and strategy for automatic detection of buildings from aerial images using combined imag...
Four different variants of building detection are presented. Each variant has a different workflow a...
Abstract: In this paper, two main approaches for automatic building detection and localization using...
Original scientific paper In this work, an automated approach for building detection using airborne ...
In this paper, we examine the use of machine learning to improve a rooftop detection process, which ...
In this work, we focus on the detection of buildings, by combining information from aerial images an...
For more than two decades, many efforts have been made to develop methods for extracting urban objec...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...