BRDF reconstruction using compressive sensing
Loading...

Date
2013
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Union Agency Science Press
Open Access Color
OpenAIRE Downloads
OpenAIRE Views
Abstract
Compressive sensing is a technique for efficiently acquiring and reconstructing the data. This technique takes advantage of sparseness or compressibility of the data allowing the entire measured data to be recovered from relatively few measurements. Considering the fact that the BRDF data often can be highly sparse we propose to employ the compressive sensing technique for an efficient reconstruction. We demonstrate how to use compressive sensing technique to facilitate a fast procedure for reconstruction of large BRDF data. We have showed that the proposed technique can also be used for the data sets having some missing measurements. Using BRDF measurements of various isotropic materials we obtained high quality images at very low sampling rates both for diffuse and glossy materials. Similar results also have been obtained for the specular materials at slightly higher sampling rates. © 2013 Elsevier B.V. All rights reserved.
Description
Keywords
Brdf Reconstruction, Compressive Sensing, Compressive Sensing, Efficient Reconstruction, High Quality Images, Isotropic Materials, Measurements Of, Missing Measurements, Sampling Rates, Specular Materials, Computer Graphics, Sensors, Visualization, Signal Reconstruction, Compressive sensing, Efficient reconstruction, High quality images, Isotropic materials, Measurements of, Missing measurements, Sampling rates, Specular materials, Computer graphics, Sensors, Visualization, Signal reconstruction, BRDF Reconstruction, Compressive Sensing
Fields of Science
Citation
WoS Q
Scopus Q
Source
21st International Conference in Central Europe on Computer Graphics Visualization and Computer Vision WSCG 2013
Volume
Issue
Start Page
88
End Page
94
