Home /Research /Object Recognition through Invariant Indexing
PERCEPTION

Object Recognition through Invariant Indexing

Charles A Rothwell

Year
1995
Citations
48

Abstract

Abstract Computer (robot) vision is a very challenging area of research. The problem of object recognition is central to computer vision in many applications such as the automatic sorting , selection, orientation, and inspection of manufactured items. It is also very important in navigation problems in mobile robots. In invarient indexing one computes measures from a scene that index into a base with a minimal search, so producing hypotheses of the identities of objects present in the scene. This book investigates how these measures are incorporated into a recognition system and also develops a range of projective indexes that can be used. The benefit of using projective measures is that they are unchanged by the imaging process.

Keywords

Search engine indexingArtificial intelligenceComputer visionComputer scienceInvariant (physics)Cognitive neuroscience of visual object recognitionSortingObject (grammar)Machine visionOrientation (vector space)

Related papers

Browse all PERCEPTION papers