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Three-dimensional tracking for efficient fire fighting in complex situations

机译:复杂情况下有效消防的三维跟踪

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Each year, hundred millions hectares of forests burn causing human and economic losses. For efficient fire fighting, the personnel in the ground need tools permitting the prediction of fire front propagation. In this work, we present a new technique for automatically tracking fire spread in three-dimensional space. The proposed approach uses a stereo system to extract a 3D shape from fire images. A new segmentation technique is proposed and permits the extraction of fire regions in complex unstructured scenes. It works in the visible spectrum and combines information extracted from YUV and RGB color spaces. Unlike other techniques, our algorithm does not require previous knowledge about the scene. The resulting fire regions are classified into different homogenous zones using clustering techniques. Contours are then extracted and a feature detection algorithm is used to detect interest points like local maxima and corners. Extracted points from stereo images are then used to compute the 3D shape of the fire front. The resulting data permits to build the fire volume. The final model is used to compute important spatial and temporal fire characteristics like: spread dynamics, local orientation, heading direction, etc. Tests conducted on the ground show the efficiency of the proposed scheme. This scheme is being integrated with a fire spread mathematical model in order to predict and anticipate the fire behaviour during fire fighting. Also of interest to fire-fighters, is the proposed automatic segmentation technique that can be used in early detection of fire in complex scenes.
机译:每年,百万公顷的森林燃烧造成人类和经济损失。对于高效的消防,地面的人员需要工具,允许预测火灾前沿传播。在这项工作中,我们提出了一种新技术,可以在三维空间中自动跟踪火灾。所提出的方法使用立体声系统从火图像中提取3D形状。提出了一种新的分段技术,并允许在复杂的非结构化场景中提取消防区域。它适用于可见光谱,并结合从YUV和RGB颜色空间中提取的信息。与其他技术不同,我们的算法不需要先前关于场景的知识。使用聚类技术将产生的消防区域分为不同的均匀区域。然后提取轮廓,并且使用特征检测算法来检测局部最大值和角质的感兴趣点。然后使用来自立体图像的提取点来计算火前的3D形状。由此产生的数据允许构建火灾量。最终模型用于计算重要的空间和时间火灾特性,如:在地面上进行的展开动态,局部方向,标题方向等。在地面上进行的测试表明了所提出的方案的效率。该方案正在与火传播数学模型集成,以预测和预测消防期间的火灾行为。也是消防员感兴趣的,是所提出的自动分割技术,可用于复杂场景中的火灾早期检测。

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