S
Sander Oude Elberink
Researcher at University of Twente
Publications - 41
Citations - 2903
Sander Oude Elberink is an academic researcher from University of Twente. The author has contributed to research in topics: Point cloud & Computer science. The author has an hindex of 17, co-authored 34 publications receiving 2633 citations. Previous affiliations of Sander Oude Elberink include International Institute of Minnesota & ITC Enschede.
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Accuracy and Resolution of Kinect Depth Data for Indoor Mapping Applications
TL;DR: The calibration of the Kinect sensor is discussed, and an analysis of the accuracy and resolution of its depth data is provided, based on a mathematical model of depth measurement from disparity.
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Recognizing basic structures from mobile laser scanning data for road inventory studies
TL;DR: In this article, a framework for structure recognition from mobile laser scanned point clouds is presented, which starts with an initial rough classification into three larger categories: ground surface, objects on ground, and objects off ground.
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Building reconstruction by target based graph matching on incomplete laser data: analysis and limitations.
TL;DR: This paper describes the contribution to the field of building reconstruction by proposing a target based graph matching approach that can handle both complete and incomplete laser data, and describes the quality of the automatically reconstructed roofs.
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Quality analysis on 3D building models reconstructed from airborne laser scanning data
TL;DR: The paper presents a theoretical and an empirical approach to identify strong parts and shortcomings in 3D building models reconstructed from airborne laser scanning data without the use of reference measurements.
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Segment-Based Classification of Damaged Building Roofs in Aerial Laser Scanning Data
TL;DR: A segment-based approach to classifying damaged building roofs in aerial laser scanning data is presented and it is shown that feature selection improves the training and the accuracy of the resulting classification.