%0 Journal Article %T 基于浅层学习方法的石漠化休耕试点区作物分类 %T Shallow learning classification of summer crops in rocky desertified fallow pilot area %A 董秀春 %A 蒋 怡 %A 黄 平 %A 李宗南※ %A 刘 轲 %A Dong Xiuchun %A Jiang Yi %A Huang Ping %A Li Zongnan※ %A Liu Ke %J 中国农业信息 %J China agricultural informatics %@ 1672-0423 %V 31 %N 2 %D 2019 %P 11-17 %K 遥感;Softmax 分类器;休耕;作物分类 %K remote sensing;softmax classifier;fallow;crop;classification %X 【目的】应用浅层结构的机器学习分类器和高空间分辨率影像实现休耕区绿肥、粮食 及经济作物快速准确分类。【方法】利用分辨率为5 m 的RapidEye 影像,以云南省石林县部 分休耕试点区为研究区,使用Softmax 浅层机器学习分类器对研究区内绿肥作物、水稻、玉 米及烟草等4 种典型作物进行遥感识别与空间信息提取,并以极大似然分类法为参照,通过 地面样方数据验证该方法的精度。【结果】基于Softmax 方法的4 种典型作物分类的总体精 度和Kappa 系数分别为85.98% 和0.815 7,比极大似然分类高4.59% 和0.061 7;绿肥、水 稻、烟草的生产者精度和用户精度均达到84% 以上,玉米则低于75%,原因是绿肥、水 稻、烟草3 种作物种植较为集中,而玉米种植地块面积小且极为分散;绿肥与烟草错分问题 较明显,影响因素为“同物异谱、异物同谱”。【结论】基于Softmax 的浅层机器学习分类器 提高了分类精度,文章研究结果可为使用浅层机器学习方法快速准确掌握休耕情况提供参 考。 %X [Purpose]Fallow monitoring is an important part of the fallow pilot project under supervision of the Ministry of Agriculture and Rural Affair. Remote sensing is able to monitor the land whether is leaving fallow or planting green manure for protecting the land capability. The monitoring result is of great significance for decision makers to know the situation of fallow in the regional scale. To achieve the fast and accurate classification of multiple crops,including green manure,grain and cash crops in the fallow region,the machine learning classifier with shallow structure and high spatial resolution remote sensing image is applied. The aim of this study is to provide reference for monitoring the land fallow situation in the fallow region with the method of the shallow learning.[ Method]In this study,part of the fallow pilot region in Shilin county was selected as the study area. The Rapideye image with the spatial resolution of 5m was used,with the support of Softmax classifier which belongs to the machine learning of shallow structure. The recognition and spatial information extraction of four typical crops,such as green manure,rice,corn and tobacco were carried out in the study area. By using the data of insitu survey,the accuracy was evaluated and compared with the results of maximum likelihood classification.[ Result]The results revealed that,the overall accuracy and Kappa coefficients of the classification based on the Softmax classifier were 85.98% and 0.815 7,respectively,slightly higher than the maximum likelihood method which has the results of 81.39% and 0.754 0. The producer precision and user precision of green manure,rice and tobacco were higher than 84%,while corn was less than 75%. The reason was that the planting of green manure,rice and tobacco are relatively concentrated,while the planting of corn was scattered. There were obvious classification errors,because of the similarity between green manure and tobacco. [Conclusion]The results indicate that Softmax classifier can improve the accuracy of multiple crops classification in fallow region. This method can provide reference for the application of shallow machine learning in fallow region. %R 10.12105/j.issn.1672-0423.20190202 %U http://www.cjarrp.com/zgnyxx/ch/reader/view_abstract.aspx %1 JIS Version 3.0.0