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面向对象的丘陵区水田遥感识别方法
引用本文:易凤佳,李仁东,常变蓉,邱 娟.面向对象的丘陵区水田遥感识别方法[J].农业工程学报,2015,31(11):186-193.
作者姓名:易凤佳  李仁东  常变蓉  邱 娟
作者单位:1. 中国科学院测量与地球物理研究所,武汉 430077; 2. 环境与灾害监测评估湖北省重点实验室,武汉 430077; 3. 中国科学院大学地球科学学院,北京 100049;,1. 中国科学院测量与地球物理研究所,武汉 430077; 2. 环境与灾害监测评估湖北省重点实验室,武汉 430077;,1. 中国科学院测量与地球物理研究所,武汉 430077; 2. 环境与灾害监测评估湖北省重点实验室,武汉 430077; 3. 中国科学院大学地球科学学院,北京 100049;,1. 中国科学院测量与地球物理研究所,武汉 430077; 2. 环境与灾害监测评估湖北省重点实验室,武汉 430077; 3. 中国科学院大学地球科学学院,北京 100049;
基金项目:国家重大专项-中国科学院战略性先导科技专项(XDA0505107)
摘    要:中国南方丘陵区地形破碎,地物分布复杂,丘陵区水田的光谱特征相对于平原区较混杂,传统的基于像元的遥感数据获取受异质性因素的影响,无法利用单一时(季)像及特定的图像自动识别规则提取精度较高的水田分布信息。针对这一问题,该文基于多时像HJ-1A/1B卫星图像,结合地面调查,以湖南省湘潭市为研究区,在易康(e Cognition)软件平台上分别以光谱特征为主要参考的多层最邻近分类法和以在特征知识库支持下的决策树分类法对丘陵区水田进行图像识别。结果表明:分层最邻近分类法比单一最邻近分类提取的精度高,但在相同分割尺度下,利用特征知识库支持下的决策树分类提取水田的精度达到最高,为90.25%,总Kappa系数为0.79,说明特征知识库支持下的决策树分类方法比最邻近分类法更加适合丘陵区水田的遥感识别。

关 键 词:遥感  决策树  图像识别  面向对象  耕地  水田  丘陵区  最邻近分类
收稿时间:2014/12/17 0:00:00
修稿时间:2015/4/10 0:00:00

Remote sensing identification method for paddy field in hilly region based on object-oriented analysis
Yi Fengji,Li Rendong,Chang Bianrong and Qiu Juan.Remote sensing identification method for paddy field in hilly region based on object-oriented analysis[J].Transactions of the Chinese Society of Agricultural Engineering,2015,31(11):186-193.
Authors:Yi Fengji  Li Rendong  Chang Bianrong and Qiu Juan
Institution:1. Institute of Geodesy and Geophysics. Chinese Academy of Sciences, Wuhan 430077, China; 2. Key Laboratory for Environment and Disaster Monitoring and Evaluation of Hubei Province, Wuhan 430077, China; 3. Faculty of Earth Sciences, University of Chinese Academy of Sciences, Beijing 100049, China;,1. Institute of Geodesy and Geophysics. Chinese Academy of Sciences, Wuhan 430077, China; 2. Key Laboratory for Environment and Disaster Monitoring and Evaluation of Hubei Province, Wuhan 430077, China;,1. Institute of Geodesy and Geophysics. Chinese Academy of Sciences, Wuhan 430077, China; 2. Key Laboratory for Environment and Disaster Monitoring and Evaluation of Hubei Province, Wuhan 430077, China; 3. Faculty of Earth Sciences, University of Chinese Academy of Sciences, Beijing 100049, China; and 1. Institute of Geodesy and Geophysics. Chinese Academy of Sciences, Wuhan 430077, China; 2. Key Laboratory for Environment and Disaster Monitoring and Evaluation of Hubei Province, Wuhan 430077, China; 3. Faculty of Earth Sciences, University of Chinese Academy of Sciences, Beijing 100049, China;
Abstract:Abstract: Identification of paddy fields in the hilly regions is important for policy making of food self-sufficiency in China. However, extracting image information using current image analysis techniques is difficult because of the unique terrain of hilly regions. The traditional pixel-based analysis of remotely sensed data is usually affected by pixel heterogeneity, mixed pixels, and spectral similarity, thus leading to the inaccurate identification of paddy fields in hilly regions. This study aimed to find other methods for accurate paddy field identification in hilly regions. The study area was Xiangtan City located in the mid-east of Hunan province, a good representative of hilly regions. In Xiangtan city, the land use change markedly increases with rapid economic development, leading to gradual decline of cultivated land. The Chinese environment and disaster mitigation satellite (i.e., HJ-1A/1B) image of the region was data source for land use map. The HJ-1A star was equipped with a charge-coupled device (CCD) camera and a hyperspectral imager, whereas the HJ-1B star was equipped with CCD and infrared (IR) cameras. The satellite observes the ground in widths of 700 km with a ground pixel resolution of 30 m by four multispectral imaging steps. The object-oriented image analysis technique is a new type of automatic technique under a computer environment. The information carrier used was multi-scale objects composed of multiple adjacent pixels containing rich semantic information. Image segmentation is an important classification step because high-precision remote sensing (RS) image classification depends on good segmentation. The multi-scale image segmentation algorithm was applied in the preliminary object extraction to fully interpret the RS images with the different spectral features, shape, and textural features of real ground targets. The configuration of multi-scale segmentation thresholds directly affected the integrity of features extracted from RS images. In this study, the cultivated and uncultivated lands were segmented with the scale of 40; then the cultivated land was further segmented under the scale of 30 and 20, respectively. By comparing and analyzing the segmentation results on the two scales, the optimal scales for the extraction of paddy fields in different regions were configured selectively. The phenomenon of different objects with the same spectral characteristics and same object showing different spectral characteristics may occur in the classification of RS images. The two phenomena pose challenges for RS image interpretation. In order to identify the information related with paddy field distribution in hilly regions, the key point is the RS identification between paddy field, dry field, forest and grassland. According to the classification features, k-nearest neighbor (KNN) classifier and decision tree classifier were employed to interpret the RS images of paddy field in hilly regions. The KNN classifier was improved by dividing the training samples into three sets. The result of the improved KNN classifier was better than that of traditional methods. The precision of the improved KNN classifier was 74.6%. However, the total precision and Kappa coefficient of the decision tree classifier were higher than the KNN classifier. The total identification precision of the former reached 90.25%, with commission error rate of 4.12%, omission error rate of 5.63%, and Kappa coefficient of 0.79. A comparison of the results of the two classifiers showed that the decision tree classifier is more suitable for paddy field identification based on object-oriented analysis in hilly regions.
Keywords:remote sensing  decision tree classifiers  image recognization  object-oriented  cultivated land  paddy field  hilly region  k-nearest neighbor
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