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High resolution mapping of development in the wildland-urban interface using object based image extraction

机译:使用基于对象的图像提取对荒野-城市界面中的开发进行高分辨率映射

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摘要

The wildland-urban interface (WUI), the area where human development encroaches on undeveloped land, is expanding throughout the western United States resulting in increased wildfire risk to homes and communities. Although census based mapping efforts have provided insights into the pattern of development and expansion of the WUI at regional and national scales, these approaches do not provide sufficient detail for fine-scale fire and emergency management planning, which requires maps of individual building locations. Although fine-scale maps of the WUI have been developed, they are often limited in their spatial extent, have unknown accuracies and biases, and are costly to update over time. In this paper we assess a semi-automated Object Based Image Analysis (OBIA) approach that utilizes 4-band multispectral National Aerial Image Program (NAIP) imagery for the detection of individual buildings within the WUI. We evaluate this approach by comparing the accuracy and overall quality of extracted buildings to a building footprint control dataset. In addition, we assessed the effects of buffer distance, topographic conditions, and building characteristics on the accuracy and quality of building extraction. The overall accuracy and quality of our approach was positively related to buffer distance, with accuracies ranging from 50 to 95% for buffer distances from 0 to 100 m. Our results also indicate that building detection was sensitive to building size, with smaller outbuildings (footprints less than 75 m2) having detection rates below 80% and larger residential buildings having detection rates above 90%. These findings demonstrate that this approach can successfully identify buildings in the WUI in diverse landscapes while achieving high accuracies at buffer distances appropriate for most fire management applications while overcoming cost and time constraints associated with traditional approaches. This study is unique in that it evaluates the ability of an OBIA approach to extract highly detailed data on building locations in a WUI setting.
机译:人类发展侵占未开发土地的荒野-城市界面(WUI)正在整个美国西部扩展,导致对家庭和社区的野火风险增加。尽管基于人口普查的制图工作已经提供了有关WUI在区域和国家范围内发展和扩展模式的见解,但是这些方法并未为详细的火灾和应急管理规划提供足够的细节,因为这需要绘制各个建筑物位置的地图。尽管已经开发了WUI的精细比例图,但是它们的空间范围常常受到限制,具有未知的准确度和偏差,并且随着时间的推移更新成本很高。在本文中,我们评估了一种半自动的基于对象的图像分析(OBIA)方法,该方法利用4波段多光谱国家航空图像程序(NAIP)图像来检测WUI中的各个建筑物。我们通过将提取建筑物的准确性和整体质量与建筑物足迹控制数据集进行比较来评估这种方法。此外,我们评估了缓冲距离,地形条件和建筑物特征对建筑物提取的准确性和质量的影响。我们的方法的整体准确性和质量与缓冲距离成正比,对于0到100 m的缓冲距离,精度范围为50到95%。我们的结果还表明,建筑物检测对建筑物大小敏感,较小的附属建筑(占地面积小于75 m 2 )的检测率低于80%,较大的住宅建筑物的检测率高于90%。这些发现表明,这种方法可以成功地识别WUI中各种景观的建筑物,同时在适合大多数消防管理应用的缓冲距离上实现高精度,同时克服了与传统方法相关的成本和时间限制。这项研究的独特之处在于它评估了OBIA方法在WUI环境中提取建筑物位置的高度详细数据的能力。

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