中国农业气象 ›› 2016, Vol. 37 ›› Issue (04): 479-491.doi: 10.3969/j.issn.1000-6362.2016.04.013

• 论文 • 上一篇    

基于图像提取技术计算夏玉米覆盖度和反演叶面积指数的精度评价

李翠娜,张雪芬,余正泓,王秀芳   

  1. 1.中国科学院大气物理研究所大气科学和地球流体力学数值模拟国家重点实验室,北京100029;2.中国科学院大学,北京 100049; 3.中国气象局气象探测中心,北京100081; 4.广东科学技术职业学院,珠海 519090; 5.河南省信阳气象局,信阳 464000
  • 收稿日期:2015-12-24 出版日期:2016-08-20 发布日期:2016-08-10
  • 作者简介:李翠娜(1981-),女,工程师,硕士,主要从事农业气象自动化研究。E-mail:licn1030@126.com
  • 基金资助:

    中国气象局沈阳大气环境研究所开放基金课题;中国气象局气象探测中心青年科技课题(TCQN201617)

Accuracy Evaluation of Summer Maize Coverage and Leaf Area Index Inversion Based on Images Extraction Technology

LI Cui-na, ZHANG Xue-fen, YU Zheng-hong, WANG Xiu-fang   

  1. 1.State Key Laboratory of Numerical Modeling for Atmospheric Sciences and Geophysical Fluid Dynamics, Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029, China; 2.University of Chinese Academy of Sciences, Beijing 100049; 3.Meteorological Observation Centre, CMA, Beijing 100081; 4.Guangdong Institute of Science and Technology, Zhuhai 519090; 5.Xinyang Meteorological Bureau of Henan Province, Xinyang 464000
  • Received:2015-12-24 Online:2016-08-20 Published:2016-08-10

摘要:

如何将农作物从复杂动态变化的农田场景中准确提取出来,是作物分割方法后续提取覆盖度或反演叶面积指数准确与否的关键。本文以郑州、泰安和固城站2011年和2012年生长季的夏玉米为研究对象,利用在线式图像自动传输装置实时获取户外不同光照强度以及真实农田复杂背景下的夏玉米群体动态图像,在对原始图像进行几何校正的基础上,采用AP-HI、ExG、ExGR和CIVE4种作物分割方法提取夏玉米覆盖度和反演叶面积指数,通过对比试验定量评价每种作物分割方法对农田复杂背景的适应能力和精度,并从中选取适合农田复杂环境下夏玉米冠层图像覆盖度和叶面积指数的有效提取方法。结果表明:光照强度变化以及植物阴影、植物残渣等复杂背景对作物分割算法的精确性影响较大,AP-HI方法在光照适应性和对抗复杂环境两个方面均优于其它方法,相对误差在0.2以下,高于目估法测量的精度;通过对比分析发现,利用4种作物分割方法通过冠层孔隙率估算不同生长期夏玉米LAI,AP-HI反演模型最优,其估算的LAI与实际测得的LAI值比较的相关系数最高,为0.89~0.96,均方根误差最小,为0.47~0.75。综合考虑模型的精度和稳定性认为,基于AP-HI方法反演叶面积指数的方法具有一定应用优势。

关键词: 农作物, 图像处理, 覆盖度, LAI, 模型

Abstract:

How to extract accurately the crops from the complex field scene is the key to calculate crop coverage and invert LAI for crop segmentation methods. In this paper, the dynamic images of summer maize growth season in 2011-2012, in Zhengzhou,Taian and Gucheng, which were under the different light intensity and complex outdoor background with shadows, plants residues, were obtained through on-line, real-time automatic transmission device. Meanwhile, to overcome the error caused by image distortion, geometric correction of the raw images was needed, crop coverage extraction ability and leaf area index inversion performance of four popular crop extraction algorithms (ExG, ExGR, CIVE and AP-HI) were compared and evaluated. By comparison, the effective extraction method for canopy coverage and leaf area index of summer maize under complex environment was selected. On this basis, models of canopy coverage and leaf area index with canopy porosity method were established and verified with measured data. The results showed that the light intensity changes and complex field environment, which contained plant shadows and residues, had a significant impact on the accuracy of crop segmentation algorithm. And inversion model of AP-HI was superior to the other methods in both light adaptability and complex environment, the relative error compared with true image was less than 0.2 and higher than the current visual estimation accuracy. Leaf area index was estimated by four extraction algorithms in summer maize growth season in 2011 and 2012. Based on comparison of R and RMSR among models, high fitting models were selected. The optimal model for LAI was based on AP-HI extraction algorithm, which had the highest R (0.89-0.96) and the lowest RMSR (0.47-0.75). Considering the accuracy and stability of the model, inversion model of AP-HI based on the method of application had more advantages.

Key words: Crops, Image processing, Coverage, Leaf area index, Model