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Review of Remotely Sensed Imagery Classification Patterns Based on Object-oriented Image Analysis 被引量:9
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作者 LIU Yongxue LI Manchun +2 位作者 MAO Liang XU Feifei HUANG Shuo 《Chinese Geographical Science》 SCIE CSCD 2006年第3期282-288,共7页
With the wide use of high-resolution remotely sensed imagery, the object-oriented remotely sensed informa- tion classification pattern has been intensively studied. Starting with the definition of object-oriented remo... With the wide use of high-resolution remotely sensed imagery, the object-oriented remotely sensed informa- tion classification pattern has been intensively studied. Starting with the definition of object-oriented remotely sensed information classification pattern and a literature review of related research progress, this paper sums up 4 developing phases of object-oriented classification pattern during the past 20 years. Then, we discuss the three aspects of method- ology in detail, namely remotely sensed imagery segmentation, feature analysis and feature selection, and classification rule generation, through comparing them with remotely sensed information classification method based on per-pixel. At last, this paper presents several points that need to be paid attention to in the future studies on object-oriented RS in- formation classification pattern: 1) developing robust and highly effective image segmentation algorithm for multi-spectral RS imagery; 2) improving the feature-set including edge, spatial-adjacent and temporal characteristics; 3) discussing the classification rule generation classifier based on the decision tree; 4) presenting evaluation methods for classification result by object-oriented classification pattern. 展开更多
关键词 object-oriented image analysis remote sensing classification pattern
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Pine wilt disease detection in high-resolution UAV images using object-oriented classification 被引量:4
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作者 Zhao Sun Yifu Wang +4 位作者 Lei Pan Yunhong Xie Bo Zhang Ruiting Liang Yujun Sun 《Journal of Forestry Research》 SCIE CAS CSCD 2022年第4期1377-1389,共13页
Pine wilt disease(PWD)is currently one of the main causes of large-scale forest destruction.To control the spread of PWD,it is essential to detect affected pine trees quickly.This study investigated the feasibility of... Pine wilt disease(PWD)is currently one of the main causes of large-scale forest destruction.To control the spread of PWD,it is essential to detect affected pine trees quickly.This study investigated the feasibility of using the object-oriented multi-scale segmentation algorithm to identify trees discolored by PWD.We used an unmanned aerial vehicle(UAV)platform equipped with an RGB digital camera to obtain high spatial resolution images,and multiscale segmentation was applied to delineate the tree crown,coupling the use of object-oriented classification to classify trees discolored by PWD.Then,the optimal segmentation scale was implemented using the estimation of scale parameter(ESP2)plug-in.The feature space of the segmentation results was optimized,and appropriate features were selected for classification.The results showed that the optimal scale,shape,and compactness values of the tree crown segmentation algorithm were 56,0.5,and 0.8,respectively.The producer’s accuracy(PA),user’s accuracy(UA),and F1 score were 0.722,0.605,and 0.658,respectively.There were no significant classification errors in the final classification results,and the low accuracy was attributed to the low number of objects count caused by incorrect segmentation.The multi-scale segmentation and object-oriented classification method could accurately identify trees discolored by PWD with a straightforward and rapid processing.This study provides a technical method for monitoring the occurrence of PWD and identifying the discolored trees of disease using UAV-based high-resolution images. 展开更多
关键词 object-oriented classification Multi-scale segmentation UAV images Pine wilt disease
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Double Polarization SAR Image Classification based on Object-Oriented Technology 被引量:2
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作者 Xiuguo Liu Yongsheng Li +1 位作者 Wei Gao Lin Xiao 《Journal of Geographic Information System》 2010年第2期113-119,共7页
This paper proposed to use double polarization synthetic aperture radar (SAR) image to classify surface feature, based on DEM. It takes fully use of the polarization information and external information. This pa-per u... This paper proposed to use double polarization synthetic aperture radar (SAR) image to classify surface feature, based on DEM. It takes fully use of the polarization information and external information. This pa-per utilizes ENVISAT ASAR APP double-polarization data of Poyang lake area in Jiangxi Province. Com-pared with traditional pixel-based classification, this paper fully uses object features (color, shape, hierarchy) and accessorial DEM information. The classification accuracy improves from the original 73.7% to 91.84%. The result shows that object-oriented classification technology is suitable for double polarization SAR’s high precision classification. 展开更多
关键词 SYNTHETIC APERTURE RADAR Image classification object-oriented Pixel-Based DEM
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Object-oriented crop classification based on UAV remote sensing imagery 被引量:1
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作者 ZHANG Lan ZHANG Yanhong 《Global Geology》 2022年第1期60-68,共9页
UAV remote sensing images have the advantages of high spatial resolution,fast speed,strong real-time performance,and convenient operation,etc.,and have become a recently developed,vital means of acquiring surface info... UAV remote sensing images have the advantages of high spatial resolution,fast speed,strong real-time performance,and convenient operation,etc.,and have become a recently developed,vital means of acquiring surface information.It is an important research task for precision agriculture to make full use of the spectrum,texture,color and other characteristic information of crops,especially the spatial arrangement and structure information of features,to explore effective methods for the classification of multiple varieties of crops.In order to explore the applicability of the object-oriented method to achieve accurate classification of UAV high-resolution images,the paper used the object-oriented classification method in ENVI to classify the UAV high-resolution remote sensing image obtained from the orderly structured 28 species of crops in the test field,which mainly includes image segmentation and object classification.The results showed that the plots obtained after classification were continuous and complete,basically in line with the actual situation,and the overall accuracy of crop classification was 91.73%,with Kappa coefficient of 0.87.Compared with the crop planting area based on remote sensing interpretation and field survey,the area error of 17 species of crops in this study was controlled within 15%,which provides a basis for object-oriented crop classification of UAV remote sensing images. 展开更多
关键词 object-oriented classification UAV remote sensing imagery crop classification
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Classification and Extraction of Urban Land-Use Information from High-Resolution Image Based on Object Multi-features 被引量:7
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作者 孔春芳 徐凯 吴冲龙 《Journal of China University of Geosciences》 SCIE CSCD 2006年第2期151-157,共7页
Urban land provides a suitable location for various economic activities which affect the development of surrounding areas. With rapid industrialization and urbanization, the contradictions in land-use become more noti... Urban land provides a suitable location for various economic activities which affect the development of surrounding areas. With rapid industrialization and urbanization, the contradictions in land-use become more noticeable. Urban administrators and decision-makers seek modern methods and technology to provide information support for urban growth. Recently, with the fast development of high-resolution sensor technology, more relevant data can be obtained, which is an advantage in studying the sustainable development of urban land-use. However, these data are only information sources and are a mixture of "information" and "noise". Processing, analysis and information extraction from remote sensing data is necessary to provide useful information. This paper extracts urban land-use information from a high-resolution image by using the multi-feature information of the image objects, and adopts an object-oriented image analysis approach and multi-scale image segmentation technology. A classification and extraction model is set up based on the multi-features of the image objects, in order to contribute to information for reasonable planning and effective management. This new image analysis approach offers a satisfactory solution for extracting information quickly and efficiently. 展开更多
关键词 urban land-use multi-features object-oriented SEGMENTATION classification extraction.
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Temporal sequence Object-based CNN(TS-OCNN) for crop classification from fine resolution remote sensing image time-series 被引量:3
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作者 Huapeng Li Yajun Tian +2 位作者 Ce Zhang Shuqing Zhang Peter MAtkinson 《The Crop Journal》 SCIE CSCD 2022年第5期1507-1516,共10页
Accurate crop distribution mapping is required for crop yield prediction and field management. Due to rapid progress in remote sensing technology, fine spatial resolution(FSR) remotely sensed imagery now offers great ... Accurate crop distribution mapping is required for crop yield prediction and field management. Due to rapid progress in remote sensing technology, fine spatial resolution(FSR) remotely sensed imagery now offers great opportunities for mapping crop types in great detail. However, within-class variance can hamper attempts to discriminate crop classes at fine resolutions. Multi-temporal FSR remotely sensed imagery provides a means of increasing crop classification from FSR imagery, although current methods do not exploit the available information fully. In this research, a novel Temporal Sequence Object-based Convolutional Neural Network(TS-OCNN) was proposed to classify agricultural crop type from FSR image time-series. An object-based CNN(OCNN) model was adopted in the TS-OCNN to classify images at the object level(i.e., segmented objects or crop parcels), thus, maintaining the precise boundary information of crop parcels. The combination of image time-series was first utilized as the input to the OCNN model to produce an ‘original’ or baseline classification. Then the single-date images were fed automatically into the deep learning model scene-by-scene in order of image acquisition date to increase successively the crop classification accuracy. By doing so, the joint information in the FSR multi-temporal observations and the unique individual information from the single-date images were exploited comprehensively for crop classification. The effectiveness of the proposed approach was investigated using multitemporal SAR and optical imagery, respectively, over two heterogeneous agricultural areas. The experimental results demonstrated that the newly proposed TS-OCNN approach consistently increased crop classification accuracy, and achieved the greatest accuracies(82.68% and 87.40%) in comparison with state-of-the-art benchmark methods, including the object-based CNN(OCNN)(81.63% and85.88%), object-based image analysis(OBIA)(78.21% and 84.83%), and standard pixel-wise CNN(79.18%and 82.90%). The proposed approach is the first known attempt to explore simultaneously the joint information from image time-series with the unique information from single-date images for crop classification using a deep learning framework. The TS-OCNN, therefore, represents a new approach for agricultural landscape classification from multi-temporal FSR imagery. Besides, it is readily generalizable to other landscapes(e.g., forest landscapes), with a wide application prospect. 展开更多
关键词 Convolutional neural network Multi-temporal imagery Object-based image analysis(obia) Crop classification Fine spatial resolution imagery
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Integrating vegetation phenological characteristics and polarization features with object-oriented techniques for grassland type identification 被引量:2
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作者 Bin Sun Pengyao Qin +5 位作者 Changlong Li Zhihai Gao Alan Grainger Xiaosong Li Yan Wang Wei Yue 《Geo-Spatial Information Science》 CSCD 2024年第3期794-810,共17页
Due to the small size,variety,and high degree of mixing of herbaceous vegetation,remote sensing-based identification of grassland types primarily focuses on extracting major grassland categories,lacking detailed depic... Due to the small size,variety,and high degree of mixing of herbaceous vegetation,remote sensing-based identification of grassland types primarily focuses on extracting major grassland categories,lacking detailed depiction.This limitation significantly hampers the development of effective evaluation and fine supervision for the rational utilization of grassland resources.To address this issue,this study concentrates on the representative grassland of Zhenglan Banner in Inner Mongolia as the study area.It integrates the strengths of Sentinel-1 and Sentinel-2 active-passive synergistic observations and introduces innovative object-oriented techniques for grassland type classification,thereby enhancing the accuracy and refinement of grassland classification.The results demonstrate the following:(1)To meet the supervision requirements of grassland resources,we propose a grassland type classification system based on remote sensing and the vegetation-habitat classification method,specifically applicable to natural grasslands in northern China.(2)By utilizing the high-spatial-resolution Normalized Difference Vegetation Index(NDVI)synthesized through the Spatial and Temporal Non-Local Filter-based Fusion Model(STNLFFM),we are able to capture the NDVI time profiles of grassland types,accurately extract vegetation phenological information within the year,and further enhance the temporal resolution.(3)The integration of multi-seasonal spectral,polarization,and phenological characteristics significantly improves the classification accuracy of grassland types.The overall accuracy reaches 82.61%,with a kappa coefficient of 0.79.Compared to using only multi-seasonal spectral features,the accuracy and kappa coefficient have improved by 15.94%and 0.19,respectively.Notably,the accuracy improvement of the gently sloping steppe is the highest,exceeding 38%.(4)Sandy grassland is the most widespread in the study area,and the growth season of grassland vegetation mainly occurs from May to September.The sandy meadow exhibits a longer growing season compared with typical grassland and meadow,and the distinct differences in phenological characteristics contribute to the accurate identification of various grassland types. 展开更多
关键词 Grassland types vegetation phenological characteristics polarization feature integrated active and passive remote sensing object-oriented classification
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ORDERED-OBJECT-ORIENTED METHOD:A NEW APPROACH OF SAMPLE PART CALCULATION AND DESIGN
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作者 李蓓智 《Journal of China Textile University(English Edition)》 EI CAS 1997年第1期6-11,共6页
This paper proposed a new approach of sample part classification and design, a so called Or-dered-object-oriented method (O-O-O method). Based on the theory of neural networks, fuzzy clustering algorithm and adaptive ... This paper proposed a new approach of sample part classification and design, a so called Or-dered-object-oriented method (O-O-O method). Based on the theory of neural networks, fuzzy clustering algorithm and adaptive pattern recognition, O-O-O method can be used to classify and design the sample parts automatically. The basic theory, the main step as well as the characteristics of the method are analysed. The construction of the ordered object in application is also presented in this paper. 展开更多
关键词 part classification NEURAL networks fuzzy CLUSTERING algorithm pattern recognition object-oriented
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A classification method of building structures based on multi-feature fusion of UAV remote sensing images
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作者 Haoguo Du Yanbo Cao +6 位作者 Fanghao Zhang Jiangli Lv Shurong Deng Yongkun Lu Shifang He Yuanshuo Zhang Qinkun Yu 《Earthquake Research Advances》 CSCD 2021年第4期38-47,共10页
In order to improve the accuracy of building structure identification using remote sensing images,a building structure classification method based on multi-feature fusion of UAV remote sensing image is proposed in thi... In order to improve the accuracy of building structure identification using remote sensing images,a building structure classification method based on multi-feature fusion of UAV remote sensing image is proposed in this paper.Three identification approaches of remote sensing images are integrated in this method:object-oriented,texture feature,and digital elevation based on DSM and DEM.So RGB threshold classification method is used to classify the identification results.The accuracy of building structure classification based on each feature and the multi-feature fusion are compared and analyzed.The results show that the building structure classification method is feasible and can accurately identify the structures in large-area remote sensing images. 展开更多
关键词 Remote sensing image Building structure classification Multi-feature fusion object-oriented classification method Texture feature classification method DSM and DEM elevation classification method RGB threshold classification method
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Object-Based Classification of Urban Distinct Sub-Elements Using High Spatial Resolution Orthoimages and DSM Layers
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作者 Ali Nouh Mabdeh A'kif Al-Fugara Mu’men Al jarah 《Journal of Geographic Information System》 2018年第4期323-343,共21页
This paper aims to assess the ways in which multi-resolution object-based classification methods can be used to group urban environments made up of a mixture of buildings, sub-elements such as car parks, roads, shades... This paper aims to assess the ways in which multi-resolution object-based classification methods can be used to group urban environments made up of a mixture of buildings, sub-elements such as car parks, roads, shades and pavements and foliage such as grass and trees. This involves using both unmanned aerial vehicles (UAVs) which provide high-resolution mosaic Orthoimages and generate a Digital Surface Model (DSM). For the study area chosen for this paper, 400 Orthoimages with a spatial resolution of 7 cm each were used to build the Orthoimages and DSM, which were georeferenced using well distributed network of ground control points (GCPs) of 12 reference points (RMSE = 8 cm). As these were combined with onboard RTK-GNSS-enabled 2-frequency receivers, they were able to provide absolute block orientation which had a similar accuracy range if the data had been collected by traditional indirect sensor orientation. Traditional indirect sensor orientation involves the GNSS receiver in the UAV receiving a differential signal from the base station through a communication link. This allows for the precise position of the UAV to be established, as the RTK uses correction, allowing position, velocity, altitude and heading to tracked, as well as the measurement of raw sensor data. By assessing the results of the confusion matrices, it can be seen that the overall accuracy of the object-oriented classification was 84.37%. This has an overall Kappa of 0.74 and the data that had poor classification accuracy included shade, parking lots and concrete pavements. These had a producer accuracy (precision) of 81%, 74% and 74% respectively, while lakes and solar panels each scored 100% in comparison, meaning that they had good classification accuracy. 展开更多
关键词 object-oriented classification Real Time KINEMATICS DSM UAV Orthoimages MOSAIC URBAN DISTINCT Sub-Elements
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集成OBIA与最小距离分类算法的遥感影像分类方法探讨
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作者 刘立 安彦 《科技创新与应用》 2025年第17期139-142,共4页
伴随遥感技术发展,高分辨率影像分类需求日增。该文聚焦集成OBIA与最小距离分类算法的遥感影像分类法,以宁夏中卫影像为研究区,经系列预处理后,运用FNEA算法多尺度分割影像,基于“试错法”择优参数;再构建特征空间,用最小距离算法分类... 伴随遥感技术发展,高分辨率影像分类需求日增。该文聚焦集成OBIA与最小距离分类算法的遥感影像分类法,以宁夏中卫影像为研究区,经系列预处理后,运用FNEA算法多尺度分割影像,基于“试错法”择优参数;再构建特征空间,用最小距离算法分类并通过上下文语义关系进行分类结果优化。结果显示优化后总体精度从90.65%提升至92.99%,Kappa系数从0.88提升至0.91。该方法能避免传统局限,可借多特征提升分类质效,但受影像分割及样本选取影响,后续需探索分割参数与关键特征优选策略,推动遥感影像分类技术精进,服务多领域资源监测与管理。 展开更多
关键词 遥感影像分类 obia 最小距离分类算法 影像分割 特征空间
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向海经济背景下北部湾滨海度假地旅游城镇化时空演变过程及驱动机制研究——广西三娘湾旅游区案例实证
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作者 王飞 宗会明 +3 位作者 田义超 张强 潘柳榕 石华先 《地域研究与开发》 北大核心 2026年第2期90-100,共11页
旅游城镇化作为旅游产业现代化和新型城镇化的重要类型,是近年来旅游研究的热点问题。以广西三娘湾旅游区为案例地,运用多期遥感影像和入户访谈等数据,测算了旅游区城镇化蔓延指数(TUSI),揭示了广西三娘湾旅游区旅游城镇化时空演变过程... 旅游城镇化作为旅游产业现代化和新型城镇化的重要类型,是近年来旅游研究的热点问题。以广西三娘湾旅游区为案例地,运用多期遥感影像和入户访谈等数据,测算了旅游区城镇化蔓延指数(TUSI),揭示了广西三娘湾旅游区旅游城镇化时空演变过程和驱动机制。结果表明:该旅游区城镇化时空演变经历了传统渔业社区服务功能初步旅游化、“围填海”项目带动的“旅游飞地”快速扩张和北方“候鸟型”旅居客“第二居所”主导的综合型滨海度假功能日趋完善3个发展阶段;2004—2025年旅游用地、建设用地以及围填海面积增幅分别为424.93 hm^(2),100.9 hm^(2),399.32 hm^(2),旅游城镇化用地规模增幅达525.83 hm^(2);旅游城镇化3个阶段蔓延指数(TUSI)分别为66.52%,197.10%,21.09%,“同步式”和“蛙跳式”是主要蔓延类型;驱动类型(TUDT)为空间驱动型,在驱动贡献度上,旅游用地空间扩张对城镇化的影响超过了人口增长的影响;自然地理条件、级差地租、土地利用效用最大化理论、市场扩张、社会资本战略性响应和政府决策引领等因素共同主导了旅游区城镇化过程。三娘湾旅游区城镇化是一种以政府为主导的“旅游飞地”式城镇化开发建设模式,通过近20年的发展,该旅游区开发模式对于广西北部湾地区的滨海度假地开发建设和城镇化起到重要推动作用。 展开更多
关键词 旅游城镇化 面向对象分类法 土地利用变化 旅游城镇化蔓延指数 驱动机制 广西三娘湾旅游区
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Object-oriented land cover classification using HJ-1 remote sensing imagery 被引量:16
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作者 SUN ZhongPing SHEN WenMing +4 位作者 WEI Bin LIU XiaoMan SU Wei ZHANG Chao YANG JianYu 《Science China Earth Sciences》 SCIE EI CAS 2010年第S1期34-44,共11页
The object-oriented information extraction technique was used to improve classification accuracy,and addressed the problem that HJ-1 CCD remote sensing images have only four spectral bands with moderate spatial resolu... The object-oriented information extraction technique was used to improve classification accuracy,and addressed the problem that HJ-1 CCD remote sensing images have only four spectral bands with moderate spatial resolution.We used two key techniques:the selection of optimum image segmentation scale and the development of an appropriate object-oriented information extraction strategy.With the principle of minimizing merge cost of merging neighboring pixels/objects,we used spatial autocorrelation index Moran's I and the variance index to select the optimum segmentation scale.The Nearest Neighborhood(NN)classifier based on sampling and a knowledge-based fuzzy classifier were used in the object-oriented information extraction strategy.In this classification step,feature optimization was used to improve information extraction accuracy using reduced data dimension.These two techniques were applied to land cover information extraction for Shanghai city using a HJ-1 CCD image.Results indicate that the information extraction accuracy of the object-oriented method was much higher than that of the pixel-based method. 展开更多
关键词 HJ-1 remote sensing imagery object-oriented optimum scale of image segmentation Nearest Neighborhood(NN)classification fuzzy classification
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基于高光谱遥感影像的土地利用分类对比研究
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作者 加依娜·塔吾列 《测绘与空间地理信息》 2025年第11期87-90,共4页
利用遥感影像获取土地利用信息时,土地利用自动分类是一项关键技术。本文以珠海一号高光谱遥感影像(OHS)为数据源,评估基于像素的监督分类、面向对象的分类(OBIA)和基于卷积神经网络(CNN)的深度学习对OHS分类性能,从而为后续利用OHS的... 利用遥感影像获取土地利用信息时,土地利用自动分类是一项关键技术。本文以珠海一号高光谱遥感影像(OHS)为数据源,评估基于像素的监督分类、面向对象的分类(OBIA)和基于卷积神经网络(CNN)的深度学习对OHS分类性能,从而为后续利用OHS的土地分类研究提供参考依据。结果表明:基于CNN模型的深度学习的分类效果最好(OA=97.28%),同时兼具高精度、视觉效果好、速度快等优势,更适用于珠海一号高光谱遥感影像分类。研究结果可为后续利用珠海一号高光谱遥感影像进行土地利用分类、长期监测提供技术支撑,为未来合理制订土地规划提供参考依据。 展开更多
关键词 珠海一号 基于像素 面向对象 监督分类 深度学习 分类性能
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基于珠海一号高光谱遥感影像的土地利用分类对比研究
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作者 邹兵 刘登洪 《测绘与空间地理信息》 2025年第11期121-124,共4页
土地利用自动分类是获取土地资源的重要手段。本文以珠海一号高光谱遥感影像(OHS)为数据源,评估基于像素的监督分类、面向对象的分类(OBIA)及卷积神经网络(CNN)的深度学习在OHS分类中的性能表现,从而为后续利用OHS的土地分类研究提供参... 土地利用自动分类是获取土地资源的重要手段。本文以珠海一号高光谱遥感影像(OHS)为数据源,评估基于像素的监督分类、面向对象的分类(OBIA)及卷积神经网络(CNN)的深度学习在OHS分类中的性能表现,从而为后续利用OHS的土地分类研究提供参考依据,结果表明:基于CNN模型的深度学习的分类效果最好(0A=97.28%),同时兼具高精度、视觉效果好、速度快等优势,更适用于珠海一号高光谱遥感影像分类。研究结果可为后续利用珠海一号高光谱遥感影像进行土地利用分类、长期监测提供技术支撑,为未来合理制订土地规划提供参考依据。 展开更多
关键词 珠海一号 基于像素 面向对象 监督分类 深度学习 分类性能
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基于面向对象和模糊逻辑的SAR溢油检测算法 被引量:4
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作者 苏腾飞 李永香 李洪玉 《海洋学报》 CAS CSCD 北大核心 2016年第1期69-81,共13页
星载合成孔径雷达(Synthetic Aperture Radar,SAR)具有全天时、全天候的工作能力,已被众多学者认为是非常适合探测海面溢油污染的遥感器。然而在SAR影像中经常出现"类油膜"现象,这严重干扰了SAR溢油检测的精度。因此,如何有... 星载合成孔径雷达(Synthetic Aperture Radar,SAR)具有全天时、全天候的工作能力,已被众多学者认为是非常适合探测海面溢油污染的遥感器。然而在SAR影像中经常出现"类油膜"现象,这严重干扰了SAR溢油检测的精度。因此,如何有效区分SAR影像中的油膜和类油膜,对提升溢油检测精度具有重要意义。本文利用面向对象图像分析的方法,从20景ENVISAT ASAR影像中提取了较多的溢油和类油膜样本,对其基于对象的形状、物理和纹理特征进行了综合分析,找出了适合区分溢油和类油膜的特征量。利用特征分析的结论,本文建立了一种基于模糊逻辑的溢油检测算法。该算法可以有效区分SAR影像中的溢油和类油膜,还可以给出暗斑被判定为溢油的概率。溢油检测实验说明,本文方法能够得到令人满意的效果。 展开更多
关键词 合成孔径雷达 特征分析 溢油分类 面向对象图像分析 模糊逻辑
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基于J48决策树的面向对象方法的土地覆被信息提取 被引量:9
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作者 孙宇翼 赵军利 +1 位作者 王苗苗 刘勇 《国土资源遥感》 CSCD 北大核心 2016年第4期156-163,共8页
过去10多a来,面向对象的影像分析方法在高分辨率影像信息提取中表现出了明显优势,得到了快速发展。该方法中一个难题是,如何有效地建立满足健壮性和通用性准则的分类规则集。基于数据挖掘原理的决策树方法有望提供有效的解决方案。选用W... 过去10多a来,面向对象的影像分析方法在高分辨率影像信息提取中表现出了明显优势,得到了快速发展。该方法中一个难题是,如何有效地建立满足健壮性和通用性准则的分类规则集。基于数据挖掘原理的决策树方法有望提供有效的解决方案。选用WEKA J48算法从影像光谱、纹理和地形特征等诸多参数中优选出部分参数构建决策树分类模型,以此建立分类规则集,并集成于面向对象的影像分类方法中。利用Landsat5 TM影像和ASTER数字高程模型数据进行的甘肃省会宁县白草塬地区土地覆被分类的结果表明,本方法所建立的分类规则集具有较佳的健壮性和通用性,其分类精度明显优于基于像元的最大似然法和基于试错性规则集的面向对象法。 展开更多
关键词 面向对象的影像分析 J48算法 决策树 土地覆被分类
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Dynamic Changes in the Wetland Landscape Pattern of the Yellow River Delta from 1976 to 2016 Based on Satellite Data 被引量:19
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作者 CONG Pifu CHEN Kexin +1 位作者 QU Limei HAN Jianbo 《Chinese Geographical Science》 SCIE CSCD 2019年第3期372-381,共10页
The Yellow River Delta wetland is the youngest wetland ecosystem in China's warm temperate zone. To better understand how its landscape pattern has changed over time and the underlying factors responsible, this st... The Yellow River Delta wetland is the youngest wetland ecosystem in China's warm temperate zone. To better understand how its landscape pattern has changed over time and the underlying factors responsible, this study analyzed the dynamic changes of wetlands using five Landsat series of images, namely MSS(Mulri Spectral Scanner), TM(Thematic Mapper), and OLI(Operational Land Imager) sensors in 1976, 1986, 1996, 2006, and 2016. Object-oriented classification and the combination of spatial and spectral features and both the Normalized Difference Vegetation Index(NDVI) and Normalized Difference Water Index(NDWI), as well as brightness characteristic indices, were used to classify the images in eCognition software. Landscape pattern changes in the Yellow River Delta over the past 40 years were then delineated using transition matrix and landscape index methods. Results show that: 1) from1976 to 2016, the total area of wetlands in the study area decreased from 2594.76 to 2491.79 km^2, while that of natural wetlands decreased by 954.03 km^2 whereas human-made wetlands increased by 851.06 km^2. 2) The transformation of natural wetlands was extensive: 31.34% of those covered by Suaeda heteropteras were transformed into reservoirs and ponds, and 24.71% with Phragmites australis coverage were transformed into dry farmland. Some human-made wetlands were transformed into non-wetlands types: 1.55% of reservoirs and ponds became construction land, and likewise 21.27% were transformed into dry farmland. 3) From 1976 to 2016, as the intensity of human activities increased, the number of landscape types in the study area continuously increased. Patches were scattered and more fragmented. The whole landscape became more complex. In short, over the past 40 years, the wetlands of the Yellow River Delta have been degraded, with the area of natural wetlands substantially reduced. Human activities were the dominant forces driving these changes in the Yellow River Delta. 展开更多
关键词 LANDSCAPE pattern object-oriented classification LANDSAT WETLANDS YELLOW River Delta
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Automated detection of lunar craters based on object-oriented approach 被引量:12
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作者 YUE ZongYu LIU JianZhong WU GanGuo 《Chinese Science Bulletin》 SCIE EI CAS 2008年第23期3699-3704,共6页
The object-oriented approach is a powerful method in making classification.With the segmentation of images to objects,many features can be calculated based on the objects so that the targets can be distinguished.Howev... The object-oriented approach is a powerful method in making classification.With the segmentation of images to objects,many features can be calculated based on the objects so that the targets can be distinguished.However,this method has not been applied to lunar study.In this paper we attempt to apply this method to detecting lunar craters with promising results.Craters are the most obvious features on the moon and they are important for lunar geologic study.One of the important questions in lunar research is to estimate lunar surface ages by examination of crater density per unit area.Hence,proper detection of lunar craters is necessary.Manual crater identification is inefficient,and a more efficient and effective method is needed.This paper describes an object-oriented method to detect lunar craters using lunar reflectance images.In the method,many objects were first segmented from the image based on size,shape,color,and the weights to every layer.Then the feature of"contrast to neighbor objects"was selected to identify craters from the lunar image.In the next step,by merging the adjacent objects belonging to the same class,almost every crater can be taken as an independent object except several very big craters in the study area.To remove the crater rays diagnosed as craters,the feature of"length/width"was further used with suitable parameters to finish recognizing craters.Finally,the result was exported to ArcGIS for manual modification to those big craters and the number of craters was acquired. 展开更多
关键词 object-oriented classification FEATURES CLEMENTINE lunar craters Definiens
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Integration of optical and SAR remote sensing images for crop-type mapping based on a novel object-oriented feature selection method
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作者 Jintian Cui Xin Zhang +1 位作者 Weisheng Wang Lei Wang 《International Journal of Agricultural and Biological Engineering》 SCIE EI CAS 2020年第1期178-190,共13页
Remote sensing is an important technical means to investigate land resources.Optical imagery has been widely used in crop classification and can show changes in moisture and chlorophyll content in crop leaves,whereas ... Remote sensing is an important technical means to investigate land resources.Optical imagery has been widely used in crop classification and can show changes in moisture and chlorophyll content in crop leaves,whereas synthetic aperture radar(SAR)imagery is sensitive to changes in growth states and morphological structures.Crop-type mapping with a single type of imagery sometimes has unsatisfactory precision,so providing precise spatiotemporal information on crop type at a local scale for agricultural applications is difficult.To explore the abilities of combining optical and SAR images and to solve the problem of inaccurate spatial information for land parcels,a new method is proposed in this paper to improve crop-type identification accuracy.Multifeatures were derived from the full polarimetric SAR data(GaoFen-3)and a high-resolution optical image(GaoFen-2),and the farmland parcels used as the basic for object-oriented classification were obtained from the GaoFen-2 image using optimal scale segmentation.A novel feature subset selection method based on within-class aggregation and between-class scatter(WA-BS)is proposed to extract the optimal feature subset.Finally,crop-type mapping was produced by a support vector machine(SVM)classifier.The results showed that the proposed method achieved good classification results with an overall accuracy of 89.50%,which is better than the crop classification results derived from SAR-based segmentation.Compared with the ReliefF,mRMR and LeastC feature selection algorithms,the WA-BS algorithm can effectively remove redundant features that are strongly correlated and obtain a high classification accuracy via the obtained optimal feature subset.This study shows that the accuracy of crop-type mapping in an area with multiple cropping patterns can be improved by the combination of optical and SAR remote sensing images. 展开更多
关键词 crop-type mapping synthetic aperture radar(SAR) high-resolution remote sensing image segmentation feature subset selection object-oriented classification
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