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Smoke Detection in Video Surveillance: A MoG Model in the Wavelet Domain

机译:视频监视中的烟雾检测:小波域中的MoG模型

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The paper presents a new fast and robust technique of smoke detection in video surveillance images. The approach aims at detecting the spring or the presence of smoke by analyzing color and texture features of moving objects, segmented with background subtraction. The proposal embodies some novelties: first the temporal behavior of the smoke is modeled by a Mixture of Gaussians (MoG ) of the energy variation in the wavelet domain. The MoG takes into account the image energy variation due to either external luminance changes or the smoke propagation. It allows a distinction to energy variation due to the presence of real moving objects such as people and vehicles. Second, this textural analysis is enriched by a color analysis based on the blending function. Third, a Bayesian model is defined where the texture and color features, detected at block level, contributes to model the likelihood while a global evaluation of the entire image models the prior probability contribution. The resulting approach is very flexible and can be adopted in conjunction to a whichever video surveillance system based on dynamic background model. Several tests on tens of different contexts, both outdoor and indoor prove its robustness and precision.
机译:本文提出了一种新的快速而强大的视频监视图像中烟雾检测技术。该方法旨在通过分析运动物体的颜色和纹理特征(通过背景减法分段)来检测弹簧或烟雾的存在。该提议体现了一些新颖性:首先,烟雾的时间行为是通过小波域中能量变化的高斯混合(MoG)建模的。 MoG考虑到由于外部亮度变化或烟雾传播而导致的图像能量变化。由于存在真实的移动物体(例如人和车辆),因此可以区分能量变化。其次,通过基于混合功能的颜色分析来丰富这种纹理分析。第三,定义了贝叶斯模型,其中在块级别检测到的纹理和颜色特征有助于对可能性进行建模,而整个图像的全局评估则对先前的概率贡献进行建模。所产生的方法非常灵活,可以与基于动态背景模型的任何视频监视系统结合使用。在室外和室内数十种不同环境下进行的多项测试证明了其坚固性和精度。

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