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Evaluation metric for rate of background detection

机译:评估度量的背景检测率

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摘要

This paper proposes an evaluation metric which derive the effectiveness of background modeling algorithms. Background modeling is a key process on developing visual surveillance systems. The requirement of adapting to dynamic environments has motivated researchers to modify existing background modeling algorithms and develop new algorithms with better adaptability. Having the algorithms developed, credentials of each of the algorithms have to be assessed to exploit their effectiveness. Various evaluation metrics have been used for evaluating the rate of foreground extraction, foreground detection, and overall accuracy. However, the rate of background detection has not been exploited by these metrics. Therefore, this paper would provide an insight to the existing evaluation metrics and introduce our proposed metric for estimating the rate of background detection.
机译:本文提出了一种评价度量,其推导了背景建模算法的有效性。背景技术建模是开发视觉监控系统的关键过程。调整对动态环境的要求具有激励的研究人员来修改现有的背景建模算法,并开发具有更好适应性的新算法。具有开发的算法,必须评估每个算法的凭证以利用其效率。各种评估指标已被用于评估前景提取,前景检测和整体精度的速率。但是,这些指标没有利用后台检测速率。因此,本文将对现有的评估指标进行了解,并介绍了我们提出的指标,以估计背景检测率。

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