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Einrichtungen >> Technische Fakultät (TF) >> Department Informatik (INF) >> Lehrstuhl für Informatik 5 (Mustererkennung) >>
Probabilistisches Szenenmodel

"Scene Exploration Using Bayesian and Neural Networks", is a project carried out as a part of "3D Image Analysis and Synthesis" at the Graduate Research Center of Chair of Pattern Recognition and is supported by German Research Foundation. The present project may be classified into one of the advanced fields of image processing and finds its application where challenge of the machine perception in complex scenes and work environments is sought.

Exploring scenes using Bayesian nets (BNs) is based on the idea of performing an active knowledge based search on images, unlike conventional visual recognition algorithms. During the indirect search of images, a sample set of training images from different classes is available right at the onset of an experiment and the nature of the class to be searched is unknown. Usually a recursive search for objects in an image, belonging to all classes is performed using a conventional object recognition system and the Bayesian approach, the goal of the present research work, can obviate this. The search of objects in an image by BNs can be confined only to a specific class or a set of classes. Our initial results have proved that if structural relationships are rightly established between the constituent objects of an image, searching scenes using BNs is quite effective. However the BN structure and the parameters are manually specified in our initial experiments.

Encouraged by the initial results, obtained by manual specification of structure and parameters to the BNs, presently we are applying Gaussian Mixture and QMR Models for object recognition. By applying these models for object recognition obviates the manual specification of parameters and BN Structure. EM Algorithm is employed to compute the A Posteriories for generic object recognition.

Projektleitung:
Prof. em. Dr.-Ing. Dr.-Ing. h.c. Heinrich Niemann

Beteiligte:
Kailash N. Pasumarthy, M.S.

Stichwörter:
Bayesnetze; Objekterkennung; probabilistische Szenenmodellierung

Laufzeit: 1.11.1999 - 31.12.2003

Förderer:
DFG

Kontakt:
Pasumarthy, Kailash N.
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