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Movie scenes detection with MIGSOM based on shots semi-supervised clustering

机译:基于镜头半监督聚类的MIGSOM检测电影场景

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摘要

The segmentation into scenes helps users to browse movie archives and to select the interesting ones. In a given movie, we have two kinds of scenes: action scenes and non-action scenes. To detect action scenes, we rely on tempo features as motion and audio energy. However, to detect non-action scenes, we have to use the content information. In this paper, we present a new approach to detect non-action movie scenes. The main idea is the use of a new dynamic variant of the self-organizing maps called MIGSOM (Multilevel Interior Growing self-organizing maps) to detect agglomerations of shots in movie scenes. The originality of MIGSOM model lies in its architecture for evolving the structure of the network. The MIGSOM algorithm is generated by a growth process by adding nodes where it is necessary, whether from the boundaries or the interior of the map. In addition, the advantage of the proposed MIGSOM algorithm is their ability to find the best structure of the output space through the training process and to represent better the semantics of the data. Our system is tested on a varied database and compared to the classical SOM and others works. The obtained results show the merit of our approach in term of recall and precision rates and that our assumptions are well founded.
机译:分割成场景有助于用户浏览电影档案并选择有趣的档案。在给定的电影中,我们有两种场景:动作场景和非动作场景。为了检测动作场景,我们依靠速度特性作为运动和音频能量。但是,要检测非动作场景,我们必须使用内容信息。在本文中,我们提出了一种检测非动作电影场景的新方法。主要思想是使用称为MIGSOM(多层内部不断增长的自组织地图)的自组织地图的新动态变体来检测电影场景中镜头的结块。 MIGSOM模型的独创性在于其用于演进网络结构的体系结构。 MIGSOM算法是通过增长过程生成的,方法是在必要时添加节点,无论是从地图的边界还是内部。此外,提出的MIGSOM算法的优势在于它们能够通过训练过程找到输出空间的最佳结构,并能够更好地表示数据的语义。我们的系统在不同的数据库上进行了测试,并与经典的SOM和其他作品进行了比较。获得的结果显示了我们的方法在召回率和准确率方面的优点,并且我们的假设是有根据的。

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