Wu Jian, Peng Dao-li
The Key Laboratory for Silviculture and Conservation of Ministry of Education, Beijing Forestry University, Beijing China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2010 Sep;30(9):2533-6.
The improvement of segmentation algorithm and the optimization of feature space are the key factors of improving the accuracy of tree-crown information extraction, and are also the urgent problems of tree-crown information extraction using high resolution images. In the present study, the spectral threshold method was used on the first-class segmentation of QuickBird multi-spectral image to obtain vegetation regions. On the second-class segmentation, the improved algorithm based on edge wa used to segment the panchromatic image, which was processed by the non-linear filtering. Afterwards, the feature space consisting of spectrum, shape and texture features was selected to extract tree-crown information. Finally, 300 random samples and an error matrix were applied to undertake the accuracy assessment of identification. Although errors and confusion exist, this method shows satisfying results with an overall accuracy of 84.67% and a KAPPA coefficient of 0.7953. The corresponding results of the traditional method are 67.67% and 0.6273. The method in this paper can achieve a more precise information extraction of the tree-crown and the results can meet the demand of accurate monitoring and decision-making.
分割算法的改进和特征空间的优化是提高树冠信息提取精度的关键因素,也是利用高分辨率影像进行树冠信息提取亟待解决的问题。在本研究中,采用光谱阈值法对QuickBird多光谱影像进行一级分割以获取植被区域。在二级分割中,采用基于边缘的改进算法对经过非线性滤波处理的全色影像进行分割。之后,选取由光谱、形状和纹理特征组成的特征空间来提取树冠信息。最后,应用300个随机样本和误差矩阵进行识别精度评估。尽管存在误差和混淆,但该方法显示出令人满意的结果,总体精度为84.67%,KAPPA系数为0.7953。传统方法的相应结果为67.67%和0.6273。本文方法能够实现更精确的树冠信息提取,结果能够满足精准监测和决策的需求。