Hierarchical overlapped growing neural gas networks with applications to video shot detection and motion characterization

Xiang Cao, P. N. Suganthan
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引用次数: 10

Abstract

This paper describes a hierarchical overlapped architecture (HOGNG) based upon the growing neural gas (GNG) network. The proposed architecture combines the unsupervised and supervised learning schemes in GNG. This novel network model was used to perform automatic video shot detection and motion characterization. Experimental results are presented to show the good classification accuracy of the proposed algorithm on real MPEG video sequences.
层次重叠增长的神经气体网络在视频镜头检测和运动表征中的应用
提出了一种基于生长神经气体网络的分层重叠结构(HOGNG)。提出的体系结构结合了GNG中的无监督和有监督学习方案。该网络模型用于视频镜头自动检测和运动表征。实验结果表明,该算法对真实的MPEG视频序列具有良好的分类精度。
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