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Rule-Based Grass Biomass Classification for Roadside Fire Risk Assessment

机译:基于规则的草地生物量分类用于路边火灾风险评估

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Roadside grass fire is a major hazard to the security of drivers and vehicles. However, automatic assessment of roadside grass fire risk has not been fully investigated. This paper presents an approach, for the first time to our best knowledge, that automatically estimates and classifies grass biomass for determining the fire risk level of roadside grasses from video frames. A major novelty is automatic measurement of grass coverage and height for predicting the biomass. For a sampling grass region, the approach performs two-level grass segmentation using class-specific neural networks. The brown grass coverage is then calculated and an algorithm is proposed that uses continuously connected vertical grass pixels to estimate the grass height. Based on brown grass coverage and grass height, a set of threshold based rules are designed to classify grasses into low, medium or high risk. Experiments on a challenging real-world dataset demonstrate promising results of our approach.
机译:路边的草地大火是对驾驶员和车辆安全的重大危害。但是,尚未充分研究对路边草火危险的自动评估。本文首次提供了一种我们所知的方法,该方法可以自动估算和分类草木生物量,从而根据视频帧确定路边草的火灾风险等级。一个主要的新颖之处是自动测量草的覆盖率和高度,以预测生物量。对于采样草区域,该方法使用特定于类的神经网络执行两级草分割。然后计算棕色草覆盖率,并提出一种算法,该算法使用连续连接的垂直草像素估计草高。基于棕色草覆盖率和草高,设计了一组基于阈值的规则,以将草分为低,中或高风险。在具有挑战性的现实世界数据集上进行的实验证明了我们方法的成功前景。

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