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Extracting Relevant Features from Videos for a Robust Smoke Detection

机译:从视频中提取相关特征以获得强大的烟雾检测

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In this paper, we propose a novel smoke detector based on relevant spatio-temporal features that depict the smoke's dynamic appearance. Since smoke is a dynamic texture that can also be partially transparent, its detection involves two steps. First, moving pixels are detected using an adaptive background subtraction technique. Then, spatio-temporal features, measuring color and texture changes due to smoke in the underlying scene, are exploited to robustly recognize smoke regions. The novelty consists in addressing this two-class classification task by an entropy-based combination of two complementary classifiers using appropriate color and texture features. Furthermore, a sample-based background modeling with a bag-of-visual words representation makes the smoke detection not only discriminant but also robust against outdoor conditions. Experimental results indicate that our method exhibits a good robustness under challenging conditions.
机译:在本文中,我们提出了一种基于相关的时空特征的新型烟雾探测器,描绘了烟雾的动态外观。由于烟雾是一种可能部分透明的动态纹理,因此其检测涉及两个步骤。首先,使用自适应背景减法技术检测移动像素。然后,潜在场景中烟雾的时空特征,测量颜色和纹理变化,被利用以强大地识别烟雾区域。新颖性通过使用适当的颜色和纹理功能来解决两个互补分类器的熵的组合来解决这项两级分类任务。此外,一种基于样品的背景建模,具有视觉上的单词表示使烟雾检测不仅判别而且对户外条件的鲁棒性。实验结果表明,我们的方法在挑战条件下表现出良好的稳健性。

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