Title :
Scene analysis under closed world assumption
Author :
Hassan, Norfaeza
Author_Institution :
Electr. Eng. Dept., WVS Tubman Coll., Liberia
Abstract :
The success of model based object recognition in a closed world depends on the correct choice of parametric primitive shapes or correct choice of a set of basic features. The later could be the result of machine learning. In this paper a choice of parametric primitive shapes is made and a recognition procedure including a set of developed algorithms is presented. The procedure is in essence a divide and conquer paradigm. The scene is divided into a two sets: (a) set of flat surfaces, and (b) set of objects. The point clouds corresponding to individual objects are extracted. Each extracted cluster is further analyzed into: (a) candidate parametric object, (b) undetermined object parts such as handles, and (c) noise due to sensory and registration errors that represent high frequency signal to be filtered out. This procedure is in the same time an autonomous learning paradigm that enables to memorize the recognized objects and uses this information to answer future questions about the scene. The experimental part is introduced to verify the proposed procedure.
Keywords :
computer graphics; divide and conquer methods; image registration; learning (artificial intelligence); object recognition; autonomous learning paradigm; candidate parametric object; closed world assumption; developed algorithms; divide and conquer paradigm; extracted cluster; frequency signal; machine learning; model based object recognition; parametric primitive shapes; point clouds; recognition procedure; recognized objects; registration error; scene analysis; sensory error; undetermined object parts; Delaunay diagram; Model driven object recognition; Parametric shapes; Scene interpretation; Scene recognition;
Conference_Titel :
Computer Theory and Applications (ICCTA), 2012 22nd International Conference on
Conference_Location :
Alexandria
Print_ISBN :
978-1-4673-2823-4
DOI :
10.1109/ICCTA.2012.6523569