Tian Tian, Fan Wen-yi, Lu Wei, Xiao Xiang
Ying Yong Sheng Tai Xue Bao. 2015 Jun;26(6):1665-72.
Information extraction for dominant tree group types is difficult in remote sensing image classification, howevers, the object-oriented classification method using high spatial resolution remote sensing data is a new method to realize the accurate type information extraction. In this paper, taking the Jiangle Forest Farm in Fujian Province as the research area, based on the Quickbird image data in 2013, the object-oriented method was adopted to identify the farmland, shrub-herbaceous plant, young afforested land, Pinus massoniana, Cunninghamia lanceolata and broad-leave tree types. Three types of classification factors including spectral, texture, and different vegetation indices were used to establish a class hierarchy. According to the different levels, membership functions and the decision tree classification rules were adopted. The results showed that the method based on the object-oriented method by using texture, spectrum and the vegetation indices achieved the classification accuracy of 91.3%, which was increased by 5.7% compared with that by only using the texture and spectrum.
在遥感影像分类中,提取优势树种组类型的信息较为困难,然而,利用高空间分辨率遥感数据的面向对象分类方法是实现准确类型信息提取的一种新方法。本文以福建省将乐林场为研究区域,基于2013年的快鸟影像数据,采用面向对象方法识别农田、灌草植物、幼林地、马尾松、杉木和阔叶树类型。利用光谱、纹理和不同植被指数这三种分类因子建立分类层次。根据不同层次,采用隶属函数和决策树分类规则。结果表明,基于面向对象方法利用纹理、光谱和植被指数的方法分类精度达到91.3%,与仅使用纹理和光谱相比提高了5.7%。