Single view single light multispectral object segmentation
Date issued
2013
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
In this paper we present an approach for the acquisition and segmentation of spectral Bidirectional Reflectance
Distribution Function (BRDF) measurements of real-world objects. The acquisition setup is a priori fully calibrated
and provides pixel-synchronous image and depth data of the examined objects. Based on one single viewing
and illumination geometry, we are able to determine spectrally distinct surface regions for objects with abruptly
changing surface materials (painted surface patches) and for objects with gradually changing materials (partially
oxidized iron). For clustering we apply the k-means algorithm and the mean-shift algorithm. The segmented
clusters are used to adapt individual spectral BRDFs (Lambert, Phong, Cook-Torrance) to the obtained cluster
data. Additionally, the elemental abundances of iron and rust on a metal surface are analyzed using spectral
unmixing. The paper presents a detailed discussion of our method and provides critical insight into the obtained
results.
Description
Subject(s)
multispektrální data, segmentace objektů, obousměrná odrazová distribuční funkce
Citation
WSCG 2013: Full Papers Proceedings: 21st International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision in cooperation with EUROGRAPHICS Association, p. 171-178.