Neural networks retraining for unsupervised video object segmentation of videoconference sequences
Authors: Ntalianis, Klimis 
Doulamis, Anastasios 
Kollias, Stefanos 
Doulamis, Nikolaos 
Issue Date: 1-Jan-2002
Conference: International Conference on Artificial Neural Networks (ICANN 2002), 28-30 August 2002, Madrid, Spain 
Book: Artificial Neural Networks - ICANN 2002 
Series: Lecture Notes in Computer Science
Abstract: 
In this paper efficient performance generalization of neural network classifiers is accomplished, for unsupervised video object segmentation in videoconference/videophone sequences. Each time conditions change, a retraining phase is activated and the neural network classifier is adapted to the new environment. During retraining both the former and current knowledge are utilized so that good network generalization is achieved. The retraining algorithm results in the minimization of a convex function subject to linear constraints, leading to very fast network weight adaptation. Current knowledge is unsupervisedly extracted using a face-body detector, based on Gaussian p.d.f models. A binary template matching technique is also incorporated, which imposes shape constraints to candidate face regions. Finally the retrained network performs video object segmentation to the new environment. Several experiments on real sequences indicate the promising performance of the proposed adaptive neural network as efficient video object segmentation tool.
ISBN: 978-3-540-46084-8
978-3-540-44074-1
ISSN: 1611-3349
DOI: 10.1007/3-540-46084-5_212
URI: https://uniwacris.uniwa.gr/handle/3000/2853
Type: Conference Paper
Department: Department of Business Administration 
School: School of Administrative, Economics and Social Sciences 
Affiliation: University of West Attica (UNIWA) 
Appears in Collections:Book Chapter / Κεφάλαιο Βιβλίου

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