Title :
A complete and extendable approach to visual recognition
Author :
Bolle, Ruud M. ; Califano, Andrea ; Kjeldsen, Rick
Author_Institution :
IBM T.J. Watson Res. Center, Yorktown Heights, NY, USA
fDate :
5/1/1992 12:00:00 AM
Abstract :
A framework for 3D object recognition is presented. Its flexibility and extensibility are accomplished through a uniform, parallel, and modular recognition architecture. Concurrent and stacked parameter transforms reconstruct a variety of features from the input scene. At each stage, constraint satisfaction networks collect and fuse the evidence obtained through the parameter transforms, ensuring a globally consistent interpretation of the input scene and allowing for the integration of diverse types of information. The final interpretation of the scene is a small consistent subset of the many initial hypotheses about partial features, primitive features, feature assemblies, and 3D objects computed by the various parameter transforms. A complete, integrated, and implemented system that extracts planar surfaces, patches of quadrics of revolution, and planar intersection curves of these surfaces from a depth map viewing 3D objects is described. Experimental results on the recognition behavior of the system are presented
Keywords :
parallel processing; pattern recognition; picture processing; 3D object recognition; concurrent transforms; constraint satisfaction networks; depth map; extensibility; feature assemblies; feature extraction; flexibility; information integration; modular recognition architecture; partial features; planar intersection curves; planar surfaces; primitive features; quadrics of revolution; stacked parameter transforms; uniform parallel architecture; visual recognition; Assembly; Computer vision; Fuses; Indexes; Indexing; Layout; Object recognition; Shape; Spatial databases; Surface reconstruction;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on