Title :
Orientation-based differential geometric representations for computer vision applications
Author :
Ping Liang ; Taubes, Clifford H.
Author_Institution :
Coll. of Eng., California Univ., Riverside, CA, USA
fDate :
3/1/1994 12:00:00 AM
Abstract :
Orientation-based representations (OBR´s) have many advantages. Three orientation-based differential geometric representations in computer vision literature are critically examined. The three representations are the extended Gaussian image (EGI), the support-function-based representation (SFBR), and the generalized Gaussian image (GGI). The scope of unique representation, invariant properties from matching considerations, computation and storage requirements, and relations between the three representations are analyzed. A constructive proof of the uniqueness of the SFBR for smooth surfaces is given. It is shown that an OBR using any combination of locally defined descriptors is insufficient to uniquely characterize a surface. It must contain either global descriptors or ordering information to uniquely characterize a surface. The GGI as it was originally introduced requires the recording of one principle vector. It is shown in this paper that this is unnecessary. This reduces the storage requirement of a GGI, therefore making it a more attractive representation. The key ideas of the GGI are to represent the multiple folds of a Gaussian image separately; the use of linked data structures to preserve ordering at all levels and between the folds; and the indexing of the data structures by the unit normal. It extends the EGI approach to a much wider range of applications
Keywords :
computer vision; data structures; image sequences; vectors; computer vision; extended Gaussian image; generalized Gaussian image; global descriptors; invariant properties; linked data structures; matching; orientation-based differential geometric representations; smooth surfaces; storage requirement; support-function-based representation; uniqueness; Application software; Computer graphics; Computer vision; Councils; Data structures; Indexing; Mathematics; Position measurement; Robot kinematics; Shape;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on