Title of article :
An efficient fully unsupervised video object segmentation scheme using an adaptive neural-network classifier architecture
Author/Authors :
A.، Doulamis, نويسنده , , N.، Doulamis, نويسنده , , K.، Ntalianis, نويسنده , , S.، Kollias, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
-615
From page :
616
To page :
0
Abstract :
In this paper, an unsupervised video object (VO) segmentation and tracking algorithm is proposed based on an adaptable neural-network architecture. The proposed scheme comprises: 1) a VO tracking module and 2) an initial VO estimation module. Object tracking is handled as a classification problem and implemented through an adaptive network classifier, which provides better results compared to conventional motion-based tracking algorithms. Network adaptation is accomplished through an efficient and cost effective weight updating algorithm, providing a minimum degradation of the previous network knowledge and taking into account the current content conditions. A retraining set is constructed and used for this purpose based on initial VO estimation results. Two different scenarios are investigated. The first concerns extraction of human entities in video conferencing applications, while the second exploits depth information to identify generic VOs in stereoscopic video sequences. Human face/ body detection based on Gaussian distributions is accomplished in the first scenario, while segmentation fusion is obtained using color and depth information in the second scenario. A decision mechanism is also incorporated to detect time instances for weight updating. Experimental results and comparisons indicate the good performance of the proposed scheme even in sequences with complicated content (object bending, occlusion).
Keywords :
Reflectance measurements , corn , Nitrogen deficiency , Crop N monitoring
Journal title :
IEEE TRANSACTIONS ON NEURAL NETWORKS
Serial Year :
2003
Journal title :
IEEE TRANSACTIONS ON NEURAL NETWORKS
Record number :
62699
Link To Document :
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