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Classification Of The Wildland-urban Interface: A Comparison Of Pixel- And Object-based Classifications Using High-resolution aerial Photography

机译:荒野与城市界面的分类:使用高分辨率航空摄影的基于像素和基于对象的分类比较

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摘要

The expansion of urban development into wildland areas can have significant consequences, including an increase in the risk of structural damage from wildfire. Land-use and land-cover maps can assist decision-makers in targeting and prioritizing risk mitigation activities, and remote sensing techniques provide effective and efficient methods to create such maps. However, some image processing approaches may be more appropriate than others in distinguishing land-use and land-cover categories, particularly when classifying high spatial resolution imagery for urbanizing environments. Here we explore the accuracy of pixel-based and object-based classification methods used for mapping in the wildland-urban interface (WUI) with free, readily available, high spatial resolution urban imagery, which is available in many places to municipal and local fire management agencies. Results indicate that an object-based classification approach provides a higher accuracy than a pixel-based classification approach when distinguishing between the selected land-use and land-cover categories. For example, an object-based approach resulted in a 41.73% greater accuracy for the built area category, which is of particular importance to WUI wildfire mitigation.
机译:将城市发展扩大到荒地可能会产生重大后果,包括增加野火造成的结构性破坏的风险。土地使用和土地覆盖图可以帮助决策者确定风险缓和活动并确定其优先次序,而遥感技术则提供了有效而有效的方法来制作此类地图。但是,在区分土地利用和土地覆盖类别时,某些图像处理方法可能比其他方法更合适,尤其是在针对城市化环境对高空间分辨率图像进行分类时。在这里,我们探索基于像素和基于对象的分类方法在野外-城市界面(WUI)中的映射方法的准确性,该方法具有免费的,易于获得的,高空间分辨率的城市图像,在许多地方,市政和地方火灾都可以使用管理机构。结果表明,在区分选定的土地利用和土地覆盖类别时,基于对象的分类方法比基于像素的分类方法具有更高的准确性。例如,基于对象的方法可使建筑区域类别的准确性提高41.73%,这对于减轻WUI野火尤为重要。

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