Automated Building Detection Via Effective Separation of Trees and Buildings
نویسندگان
چکیده
Automated building detection has been an active topic in photogrammetry and computer vision. One of the challenges is to effectively separate buildings from trees using aerial imagery and Lidar data. In cases where an adopted building detection technique cannot distinguish between these two classes of objects, the presence of trees in the scene can increase the rates of both false positives and false negatives in the building detection process. This paper presents an automatic building detection technique which exhibits improved separation of buildings from trees. In addition to using traditional features such as height, width and colour, the improved detector uses texture and edge orientation information from both Lidar and orthoimagery. Therefore, image entropy and colour information are jointly applied to remove easily distinguishable trees. Afterwards, a rule-based procedure using the edge orientation histogram from the imagery is followed to eliminate false positive candidates. The improved detector has been tested on a number of scenes from three different test areas. It is demonstrated that the algorithm performs well even in complex scenes and a 10% increase both in completeness and correctness has been achieved.
منابع مشابه
Effective Seperation of Trees and Buildings for Automated Building Detection
Effective separation of buildings from trees is a major challenge in automatic building detection from aerial imagery and Lidar data. In cases where an adopted building detection technique cannot distinguish between these two classes of objects, the presence of trees in the scene can increase the rates of both false positives and false negatives in the building detection process. This paper pre...
متن کاملBuilding Detection in Complex Scenes Thorough Effective Separation of Buildings from Trees
Effective separation of buildings from trees is a major challenge in image-based automatic building detection. This paper presents a three-step method for effective separation of buildings from trees using aerial imagery and LIDAR data. Firstly, it uses cues such as height to remove objects of low height such as bushes, and width to exclude trees with small horizontal coverage. The height thres...
متن کاملImproved Building Detection Using Texture Information
The performance of automatic building detection techniques can be significantly impeded due to the presence of same-height objects, for example, trees. Consequently, if a building detection technique cannot distinguish between trees and buildings, both its false positive and false negative rates rise significantly. This paper presents an improved automatic building detection technique that achi...
متن کاملAutomatic Detection of Changes from Laser Scanner and Aerial Image Data for Updating Building Maps
The goal of our study was to develop an automatic change detection method based on laser scanner, aerial image and map data to be used in updating of building maps. The method was tested in a study area of 2.2 km near Helsinki. Buildings were first detected by segmenting a digital surface model (DSM) derived from laser scanner data and classifying the segments as buildings, trees and ground sur...
متن کاملVarious Building Detection Methods with the Use of Image and Lidar Data
Original scientific paper In this work, an automated approach for building detection using airborne images and LIDAR data is presented. A combined approach of four methods achieved the best results, using slope-based DSM filtering as well as classification of multispectral images, elevation data and vertical LIDAR point density. The first variant of building detection is based on multispectral ...
متن کامل