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Reducing False Alarm of Video-Based Smoke Detection by Support Vector Machine

机译:支持向量机减少基于视频的烟雾探测虚警

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Techniques used in video smoke detection systems have been discussed noticeably in past few years. With the advantage of early fire alarm in large or specific spaces such as studio and tunnels, the video-based smoke detection systems would not have time delay as conventional detectors. In contrast, how to reduce false alarm and increase the generalization ability is the key issue for such state-of-the-art systems. In this paper, examples consisting of features extracted from a real time video are collected for the training of a discriminating model. A prototype of support vector machine (SVM) is therefore introduced for the discriminating model with the capability in small sample size training and the good generalization ability. In order to reduce the false alarm, the prototype is then extended to a class-imbalanced learning model to deal with rarity of the positive class. A number of assuming data are used for imbal-anced test to cope with the real world of fire safety. The technique is optimistic to enhance accuracy and reduce false alarm in video-based smoke systems.
机译:在过去的几年中,视频烟雾检测系统中使用的技术已经得到了广泛的讨论。由于在工作室或隧道等大型或特定空间中早期火灾警报的优势,基于视频的烟雾探测系统不会像传统探测器那样具有时间延迟。相反,如何减少误报并提高泛化能力是此类最新系统的关键问题。在本文中,收集了包含从实时视频中提取的特征的示例,用于训练区分模型。因此,为区分模型引入了支持向量机(SVM)的原型,该模型具有小样本量训练能力和良好的泛化能力。为了减少误报,然后将原型扩展到类不平衡的学习模型,以处理积极类的稀有性。许多假设数据用于平衡测试,以应对现实中的消防安全。该技术是乐观的,可以提高准确性,并减少基于视频的烟雾系统中的误报。

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