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Characterizing the Uncertainty of Classification Methods and Its Impact on the Performance of Crowdsourcing

机译:描述分类方法的不确定性及其对众包绩效的影响

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Video surveillance systems are widely deployed for public safety. Real-time monitoring and alerting are some of the key requirements for building an intelligent video surveillance system. Real-life settings introduce many challenges that can impact the performance of real-time video analytics. Video analytics are desired to be resilient to adverse and changing scenarios. In this paper we present various approaches to characterize the uncertainty of a classifier and incorporate crowdsourcing at the times when the method is uncertain about making a particular decision. Incorporating crowdsourcing when a real-time video analytic method is uncertain about making a particular decision is known as online active learning from crowds. We evaluate our proposed approach by testing a method we developed previously for crowd flow estimation. We present three different approaches to characterize the uncertainty of the classifier in the automatic crowd flow estimation method and test them by introducing video quality degradations. Criteria to aggregate crowdsourcing results are also proposed and evaluated. An experimental evaluation is conducted using a publicly available dataset.
机译:为了公共安全,视频监控系统已被广泛部署。实时监视和警报是构建智能视频监视系统的一些关键要求。现实生活中的设置带来了许多挑战,这些挑战可能会影响实时视频分析的性能。希望视频分析能够应对不利和不断变化的情况。在本文中,我们提出了各种方法来表征分类器的不确定性,并在该方法不确定做出特定决策时将众包纳入其中。当实时视频分析方法不确定是否可以做出特定决策时,将众包整合到一起,这就是从人群中进行在线主动学习。我们通过测试我们先前为人群流量估计开发的方法来评估我们提出的方法。我们提出了三种不同的方法来表征自动人群流量估计方法中分类器的不确定性,并通过引入视频质量下降来对其进行测试。还提出并评估了汇总众包结果的标准。使用公开可用的数据集进行实验评估。

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