摘要
为深化遥感解译在农田类型自动提取研究中的应用,了解研究区内农业资源的现状,该文以镇赉县为试验区,设计了基于多时相遥感数据的农田分类提取方案。该方案通过计算地表植被指数时序变化的变程(主要分类变量),结合研究区影像纹理局部方差、修正土壤调整指数和地表水体指数构建多维特征空间数据,对研究区内的水田和旱地进行分类提取。结果表明:1)该算法的总体分类精度为94%,Kappa系数为0.87:2)水田的遥感提取精度为98.3%,旱地为98%;3)水田占全区总面积的13.26%,旱地为20.12%,旱地是研究区内的主要农田类型。该文研究成果为未来农业发展的政策和规划提供一定的参考依据。
Both artificial visual interpretation and computer automatic classification were the mainly remote sensing methods used to extract farmland information. At present, it is still difficult to entirely replace the artificial visual interpretation for the computer automatic classification to extract farmlands' type information of the remote sensing image, because the automatic method needs more efforts to improve the precision of the classification results, so the problem became the key link of the automatic classification extraction. How to extract farmlands' type information in the western part of Jilin is one of the major problems which the paper attempts to solve to distinguish paddy field from dry land. A new solution to extract the farmland information has been designed for the remote sensing automatic classification, based on the spatial variation theory. The classification scheme was carried out by operating in an R language platform and the remote sensing software ERDAS platform. The farmland type of Zhenlai in the western of Jilin was extracted and monitored by making use of four indexes, the range of NDVI series, the local variance of image texture, the modified soil adjusted vegetation index, and the normalized difference water index, which have significant meaning for the farmland cover type in the transition zone between the cropping area and the nomadic area. These variances with clear physical meaning information (including the vegetation, water, soil drought conditions) and phonological information were used to build a multi-dimensional feature space classification data set. The results indicated that: 1) the dry field of which an area of 1065.337 krn2 was cultivated in the study area was the largest farmlands' type, and also was one of the most important ecological landscape types. It's the spatial distribution characteristic of the study area that is a relatively dispersed dry field, and a relatively concentrated paddy field; 2) based on the multidimensional space data set, the algorithm of a support vector machine (SVM) was chosen to automatically extract the farmland types' data of the paddy field and the dry land. The overall classification accuracy of the algorithm was 94%, the Kappa coefficient of the classification was 0.87, and the extracted accuracy of the paddy field was 98.3~,/0, while the extracted accuracy of the dry land was 98%. The existing automatic extraction approach was implemented to obtain a comparatively ideal classification result; 3) through the farmland's regional analysis, a depression that has more lowland and easy seeper is suitable for the reclamation of paddy field. It's noted that the extracted classification has an obvious regional farmland type, and the regional features were consistent with the farming cultivation characteristics in the northeast plains; 4) both rice and corn were typical unimodal type growth crops, and the similar growth peak, but the result of the range (rice, 3.8±0.4; upland crops, 3.4±0.3;) noted that: the phenology information of different vegetation types has its own characteristics; this characteristic of the NDVI seasonal variation curve is real.
出处
《农业工程学报》
EI
CAS
CSCD
北大核心
2015年第7期145-150,共6页
Transactions of the Chinese Society of Agricultural Engineering
基金
中国地质调查局项目(1212010911084)
吉林省科技发展计划资助项目(20140101211JC)
吉林省教育厅"十二五"科学技术研究项目(2013-391号
吉林省西部盐碱化草地植被恢复关键技术研究)
吉林省重点科技攻关项目(20130206027NY)
关键词
遥感
分类
提取
半方差函数
吉林西部
水田
旱地
remote sensing
classification
extraction
semi-variance function
western of Jilin
paddy field
dry land