城市环境航拍图像分割用于植被监测

J. Martins, D. Sant’Ana, J. M. Junior, H. Pistori, W. Gonçalves
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引用次数: 1

摘要

城市森林对人民的福祉和生活质量的改善至关重要。例如,它们有助于雨水阻尼和改善当地气候。因此,正确和准确地映射该资源是正确管理该资源的基础。我们研究了一种结合机器学习和SLIC超像素技术的方法,使用不同的超像素(k)数,使用GSD(地面样本距离)为10 cm的航空正射像在巴西Campo Grande-MS市的大都市地区绘制树木。使用weka分类器验证了超像素和机器学习算法的组合,并取得了良好的结果,即F-1 % 98.2%, MCC %88.4和准确率% 96.8,支持该方法在用于城市树木映射时是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aerial Image Segmentation In Urban Environment For Vegetation Monitoring
Urban forests are crucial for the population well-being and improvement of the quality of life. For example, they contribute to the rain damping and to the improvement of the local climate. Therefore a correct and accurate mapping of this resource is fundamental for its correct management. We investigated a method that combines machine learning and SLIC superpixel techniques using different Superpixels (k) number to map trees in the metropolitan region of the municipality of Campo Grande-MS, Brazil with aerial orthoimages with GSD (Ground Sample Distance) of 10 cm. The combination of superpixels and machine learning algorithms were checked out with a set of weka classifiers and achieved good results i.e. F-1 %98.2, MCC %88.4 and Accuracy of % 96.8, supporting that this method is efficient when used for urban trees mapping.
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