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Developing an Integrated Video Analysis System

机译:开发集成视频分析系统

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摘要

Matching the similarity between two units of data occurs as a frequent task in video or image analysis. The parameters of matching techniques are level of abstraction of features, distance measures and normalization of features, if supported, or else the method of relatively weighing the features. Most multimedia analysis systems employ only low level features with distance measures similar to Euclidean distance, with no method to automatically generate the weights of the features and thus are ineffective in replenishing suitable matches to the user's demands. We argue for shifting the burden of mapping the feature space with relevant categories from the user to the multimedia analysis system.In this paper, a Bayesian Framework is presented where the evaluation of the parameters of classification and especially the relevancy of each feature with respect to each class is performed automatically. The probabilistic framework is extended to work well for generalized multi-modal distribution of a particular class over the feature space. Theoretical foundation is developed to provide simultaneously existing multiple views to an image or a video sequence. The low-level features can be synthesized with intelligent association to furnish high-level features, which could be more meaningful to the user. The significance of this work is presented by comparing with a system which employs a unsophisticated approach similar to common systems where feature vector of query image and feature vector of template image are compared by means of weighted Euclidean distance. The superiority of our approach is presented over the database consisting of 300 video sequences comprising of diverse video classes.
机译:匹配两个数据单元之间的相似性是视频或图像分析中的一项常见任务。匹配技术的参数是特征的抽象级别,距离度量和特征规范化(如果支持),或者是相对权衡特征的方法。大多数多媒体分析系统仅采用具有类似于欧几里得距离的距离度量的低级特征,而没有自动生成特征权重的方法,因此无法有效地补充满足用户需求的匹配项。我们主张将映射具有相关类别的特征空间的负担从用户转移到多媒体分析系统。在本文中,提出了一种贝叶斯框架,其中评估了分类参数,尤其是每个特征相对于相关性的相关性。每个课程都是自动执行的。概率框架已扩展,可以很好地用于特定类在特征空间上的广义多模式分布。理论基础的发展是为图像或视频序列同时提供多个视图。可以通过智能关联来合成低级功能,以提供高级功能,这对用户可能更有意义。通过与采用与普通系统相似的简单方法的系统进行比较,来说明这项工作的意义。在普通系统中,查询图像的特征向量和模板图像的特征向量通过加权欧几里得距离进行比较。我们的方法的优越性超过了由300个视频序列组成的数据库,该视频序列包含各种视频类别。

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