DocumentCode
747777
Title
Appearance Derivatives for Isonormal Clustering of Scenes
Author
Koppal, Sanjeev J. ; Narasimhan, Srinivasa G.
Author_Institution
Robot. Inst., Carnegie Mellon Univ., Pittsburgh, PA
Volume
31
Issue
8
fYear
2009
Firstpage
1375
Lastpage
1385
Abstract
A new technique is proposed for scene analysis, called "appearance clustering.rdquo The key result of this approach is that the scene points can be clustered according to their surface normals, even when the geometry, material, and lighting are all unknown. This is achieved by analyzing an image sequence of a scene as it is illuminated by a smoothly moving distant light source. In such a scenario, the brightness measurements at each pixel form a "continuous appearance profile.rdquo When the source path follows an unstructured trajectory (obtained, say, by smoothly hand-waving a light source), the locations of the extrema of the appearance profile provide a strong cue for the scene point\´s surface normal. Based on this observation, a simple transformation of the appearance profiles and a distance metric are introduced that, together, can be used with any unsupervised clustering algorithm to obtain isonormal clusters of a scene. We support our algorithm empirically with comprehensive simulations of the Torrance-Sparrow and Oren-Nayar analytic BRDFs, as well as experiments with 25 materials obtained from the MERL database of measured BRDFs. The method is also demonstrated on 45 examples from the CURET database, obtaining clusters on scenes with real textures such as artificial grass and ceramic tile, as well as anisotropic materials such as satin and velvet. The results of applying our algorithm to indoor and outdoor scenes containing a variety of complex geometry and materials are shown. As an example application, isonormal clusters are used for lighting-consistent texture transfer. Our algorithm is simple and does not require any complex lighting setup for data collection.
Keywords
image sequences; pattern clustering; unsupervised learning; appearance clustering; brightness measurement; continuous appearance profile; distance metric; image sequence; isonormal scene clustering; unstructured trajectory; unsupervised clustering algorithm; Appearance modeling; Computer vision; Image Processing and Computer Vision; Scene Analysis; active illumination; material invariants; physics-based vision; relighting.; scene reconstruction;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2008.148
Filename
4540096
Link To Document