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Automated Extracting Tree Crown from Quickbird Stand Image

机译:从Quickbird Stand图像中自动提取树冠

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摘要

Artificial intelligence technologies with spatial information technologies play more and more roles in precision agriculture and precision forestry. This paper puts up a new artificial intelligence algorithm which based on seeded based region growth method to extract tree crown on Quickbird forest stand image. It is a kind of object based canopy and gap information extracting method specially suited for high-resolution imagery to get meaningful tree crown object .The main processes to carry out the experiment and validation on the Quickbird satellite images in Populusxxiaohei plantation even stand at Xue JiaZhuang wood farm in Shanxi Province of China is described in detail in the paper. The average tree numbers identification error is 18.9%. The result shows that this algorithm is an effective way to get segmented crown in real stand image. This algorithm can be powerful tools for precision forestry. We suggest users to choose suitable features and parameter values try by try in forehand applying.
机译:带有空间信息技术的人工智能技术在精准农业和精准林业中扮演着越来越重要的角色。提出了一种新的人工智能算法,该算法基于基于种子的区域生长方法,在Quickbird林分图像上提取树冠。这是一种基于对象的冠层和间隙信息提取方法,特别适合于高分辨率图像来获取有意义的树冠对象。对小黑杨人工林中的Quickbird卫星图像进行实验和验证的主要过程,甚至是在薛家庄本文详细介绍了中国山西省的木场。平均树数识别误差为18.9%。结果表明,该算法是获取真实林分图像中树冠分割的有效方法。该算法可以成为精密林业的强大工具。我们建议用户在正手应用中尝试选择合适的功能和参数值。

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