Evaluation and Knowledge Representation Formalisms to Improve Video Understanding

B. Georis, Magale Maziere, F. Brémond
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引用次数: 15

Abstract

This article presents a methodology to build efficient real-time semantic video understanding systems addressing real world problems. In our case, semantic video under- standing consists in the recognition of predefined scenario models in a given application domain starting from a pixel analysis up to a symbolic description of what is happening in the scene viewed by cameras. This methodology proposes to use evaluation to acquire knowledge of programs and to represent this knowledge with appropriate formalisms. First, to obtain efficiency, a formalism enables to model video processing programs and their associated parameter adaptation rules. These rules are written by experts after performing a technical evaluation. Second, a scenario for- malism enables experts to model their needs and to easily refine their scenario models to adapt them to real-life situa- tions. This refinement is performed with an end-user evalu- ation. This second part ensures that systems match end-user expectations. Results are reported for scenario recognition performances on real video sequences taken from a bank agency monitoring application.
提高视频理解的评价和知识表示形式
本文提出了一种方法来建立有效的实时语义视频理解系统解决现实世界的问题。在我们的案例中,语义视频理解包括在给定应用领域中识别预定义的场景模型,从像素分析到摄像机所看到的场景中正在发生的事情的符号描述。这种方法建议使用评估来获取程序的知识,并用适当的形式表示这些知识。首先,为了提高效率,采用形式化方法对视频处理程序及其相关参数自适应规则进行建模。这些规则是由专家在进行技术评估后编写的。第二,病态的情景使专家能够对他们的需求进行建模,并容易地改进他们的情景模型,使其适应现实生活中的情况。此细化是通过最终用户评估来执行的。第二部分确保系统符合最终用户的期望。报告了从银行机构监控应用程序中获取的真实视频序列的场景识别性能的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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