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应用生态学报 ›› 2017, Vol. 28 ›› Issue (10): 3163-3173.doi: 10.13287/j.1001-9332.201710.019

• 目录 • 上一篇    下一篇

综合面向对象与决策树的毛竹林调查因子及碳储量遥感估算

杜华强1,2,3*,孙晓艳1,2,3,韩凝1,2,3,毛方杰1,2,3   

  1. 1. 省部共建亚热带森林培育国家重点实验室, 浙江临安 311300;
    2. 浙江省森林生态系统碳循环与固碳减排重点实验室, 浙江临安 311300;
    3. 浙江农林大学环境与资源学院, 浙江临安 311300
  • 收稿日期:2017-02-17 修回日期:2017-07-27 出版日期:2017-10-18 发布日期:2017-10-18
  • 作者简介:杜华强,男,1975年生,教授.主要从事森林资源遥感监测研究.E-mail:dhqrs@126.com
  • 基金资助:

    本文由浙江省与中国林业科学研究院省院合作林业科技项目(2017SY04)、浙江省自然科学基金项目(LR14C160001,LQ15C160003)和国家自然科学基金项目(31670644,31370637)资助

RS estimation of inventory parameters and carbon storage of moso bamboo forest based on synergistic use of object-based image analysis and decision tree.

DU Hua-qiang1,2,3*, SUN Xiao-yan1,2,3, HAN Ning1,2,3, MAO Fang-jie1,2,3   

  1. 1. State Key Laboratory of Subtropical Silviculture Coconstructed by Zhejiang Province and Ministry of Science and Technology, Lin’an 311300, Zhejiang, China;
    2. Zhejiang Province Key Laboratory of Carbon Cycling in Forest Ecosystems and Carbon Sequestration, Lin’an 311300, Zhejiang, China;
    3. School of Environmental and Resources Science, Zhejiang A&F University, Lin’an 311300, Zhejiang, China
  • Received:2017-02-17 Revised:2017-07-27 Online:2017-10-18 Published:2017-10-18
  • Supported by:

    This work was supported by the Joint Research fund of Department of Forestry of Zhejiang Province and Chinese Academy of Forestry (2017SY04), the Natural Science Foundation of Zhejiang Province, China (LR14C160001, LQ15C160003), and the National Natural Science Foundation of China (31670644, 31370637).

摘要: 综合面向对象和CART决策树方法,对浙江省安吉县山川乡毛竹林分布信息及胸径、树高、郁闭度等调查因子和地上部分碳储量进行遥感定量估算.结果表明: 综合基于多尺度分割的对象特征及决策树,能够充分利用不同尺度层次信息关联的优势,实现毛竹林专题信息高精度提取,其用户精度达到89.1%;基于对象特征构建的毛竹林调查因子回归树估算模型,其估算结果均能达到正常或较好水平,其中,郁闭度回归树模型的精度最高为67.9%,估算效果较好;而平均胸径和树高估算的总精度相对较低,这与采用光学遥感数据进行森林树高、胸径估算达不到理想结果的结论一致;毛竹林地上部分碳储量回归树模型的估算结果较好,高值区域估算精度达到80%以上.

Abstract: By synergistically using the object-based image analysis (OBIA) and the classification and regression tree (CART) methods, the distribution information, the indexes (including diameter at breast, tree height, and crown closure), and the aboveground carbon storage (AGC) of moso bamboo forest in Shanchuan Town, Anji County, Zhejiang Province were investigated. The results showed that the moso bamboo forest could be accurately delineated by integrating the multi-scale ima-ge segmentation in OBIA technique and CART, which connected the image objects at various scales, with a pretty good producer’s accuracy of 89.1%. The investigation of indexes estimated by regression tree model that was constructed based on the features extracted from the image objects reached normal or better accuracy, in which the crown closure model archived the best estimating accuracy of 67.9%. The estimating accuracy of diameter at breast and tree height was relatively low, which was consistent with conclusion that estimating diameter at breast and tree height using optical remote sensing could not achieve satisfactory results. Estimation of AGC reached relatively high accuracy, and accuracy of the region of high value achieved above 80%.