Automatic Representation and Segmentation of Video Sequences via a Novel Framework Based on the nD-EVM and Kohonen Networks

José-Yovany Luis-García, R. Pérez-Aguila
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引用次数: 2

Abstract

Recently in the Computer Vision field, a subject of interest, at least in almost every video application based on scene content, is video segmentation. Some of these applications are indexing, surveillance, medical imaging, event analysis, and computer-guided surgery, for naming some of them. To achieve their goals, these applications need meaningful information about a video sequence, in order to understand the events in its corresponding scene. Therefore, we need semantic information which can be obtained from objects of interest that are present in the scene. In order to recognize objects we need to compute features which aid the finding of similarities and dissimilarities, among other characteristics. For this reason, one of the most important tasks for video and image processing is segmentation. The segmentation process consists in separating data into groups that share similar features. Based on this, in this work we propose a novel framework for video representation and segmentation. The main workflow of this framework is given by the processing of an input frame sequence in order to obtain, as output, a segmented version. For video representation we use the Extreme Vertices Model in the -Dimensional Space while we use the Discrete Compactness descriptor as feature and Kohonen Self-Organizing Maps for segmentation purposes.
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基于nD-EVM和Kohonen网络的视频序列自动表示与分割
近年来,在计算机视觉领域,一个令人感兴趣的主题是视频分割,至少在几乎所有基于场景内容的视频应用中都是如此。其中一些应用包括索引、监视、医学成像、事件分析和计算机指导手术。为了实现它们的目标,这些应用程序需要关于视频序列的有意义的信息,以便理解相应场景中的事件。因此,我们需要从场景中存在的感兴趣的对象中获得语义信息。为了识别物体,我们需要计算特征,这些特征有助于发现物体的相似性和差异性,以及其他特征。因此,视频和图像处理中最重要的任务之一就是分割。分割过程包括将数据分成具有相似特征的组。在此基础上,本文提出了一种新的视频表示和分割框架。该框架的主要工作流程是通过对输入帧序列进行处理,以获得作为输出的分段版本。对于视频表示,我们在维空间中使用极限顶点模型,而我们使用离散紧度描述符作为特征和Kohonen自组织映射用于分割目的。
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