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首页> 外文期刊>Geo-spatial information science >Local color and morphological image feature based vegetation identification and its application to human environment street view vegetation mapping, or how green is our county?
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Local color and morphological image feature based vegetation identification and its application to human environment street view vegetation mapping, or how green is our county?

机译:局部颜色和形态学图像具有基于植被识别及其在人类环境街景植被映射的应用,或者绿色是我们的县?

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Measuring the amount of vegetation in a given area on a large scale has long been accomplished using satellite and aerial imaging systems. These methods have been very reliable in measuring vegetation coverage accurately at the top of the canopy, but their capabilities are limited when it comes to identifying green vegetation located beneath the canopy cover. Measuring the amount of urban and suburban vegetation along a street network that is partially beneath the canopy has recently been introduced with the use of Google Street View (GSV) images, made accessible by the Google Street View Image API. Analyzing green vegetation through the use of GSV images can provide a comprehensive representation of the amount of green vegetation found within geographical regions of higher population density, and it facilitates an analysis performed at the street-level. In this paper we propose a fine-tuned color based image filtering and segmentation technique and we use it to define and map an urban green environment index. We deployed this image processing method and, using GSV images as a high-resolution GIS data source, we computed and mapped the green index of Milwaukee County, a 3,082 k m 2 urban/suburban county in Wisconsin. This approach generates a high-resolution street-level vegetation estimate that may prove valuable in urban planning and management, as well as for researchers investigating the correlation between environmental factors and human health outcomes.
机译:使用卫星和空中成像系统来实现大规模的给定区域中的植被的量。这些方法非常可靠地测量植被覆盖在冠层顶部,但在识别位于顶篷盖下方的绿色植被时,它们的能力受到限制。最近通过使用Google Street View(GSV)图像来介绍了街道网络沿着街道网络沿着街道网络的城市和郊区植被,这些街道街道(GSV)图像是由Google Street View Image API可访问的。通过使用GSV图像分析绿色植物可以提供群体密度较高的地理区域内发现的绿色植被的全面表示,并且促进了在街道层面进行的分析。在本文中,我们提出了一种微调基于颜色的图像滤波和分段技术,我们使用它来定义和映射城市绿色环境指数。我们部署了此图像处理方法,并使用GSV图像作为高分辨率GIS数据源,我们计算并映射了Milwaukee县的绿色指数,威斯康星州的3,082 k米2城市/郊区县。这种方法产生了一个高分辨率的街道级植被估计,可能在城市规划和管理中证明有价值,以及研究环境因素与人类健康结果之间的相关性的研究人员。

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