Corner Detection and Classification of Simple Objects in Low-Depth Resolution Range Images
Abstract
This paper deals with corner detection of simple geometric objects in quantized range images. Low depth resolution and noise introduce challenges in edge and corner detection. Corner detection and classification is based on layer by layer depth data extraction and morphologic operations. Appearance based heuristics are applied to identify different corner types defined in this paper. Both computer generated and captured range images are dealt with. Synthetic range images have arbitrary range resolution while captured images are based on the sensor used. Real world data is collected using a structured light based sensor to provide dense range map.
Keywords:
Range image, Corner detection, Feature extraction, ThinningPublished Online
2013-08-30
How to Cite
Kovács, V., Tevesz, G. “Corner Detection and Classification of Simple Objects in Low-Depth Resolution Range Images”, Periodica Polytechnica Electrical Engineering and Computer Science, 57(1), pp. 9–17, 2013. https://doi.org/10.3311/PPee.2075
Issue
Section
Articles