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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 land cover classification using ALS and GeoEye imagery over mining area 被引量:6
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作者 YU Hai-yang, CHENG Gang, GE Xiao-san, LU Xiao-ping Key Laboratory of Mine Spatial Information Technologies of State Bureau of Surveying and Mapping, Henan Polytechnic University, Jiaozuo 454000, China 《中国有色金属学会会刊:英文版》 CSCD 2011年第S3期733-737,共5页
An object oriented coal mining land cover classification method based on semantically meaningful image segmentation and image combination of GeoEye imagery and airborne laser scanning (ALS) data was presented. First, ... An object oriented coal mining land cover classification method based on semantically meaningful image segmentation and image combination of GeoEye imagery and airborne laser scanning (ALS) data was presented. First, DEM, DSM and nDSM (normalized Digital Surface Model, nDSM) were extracted from ALS data. The GeoEye imagery and DSM data were combined to create segmented objects based on neighbor regions merge method. Then 10 kinds of objects were extracted. Different kinds of vegetation objects, including crop, grass, shrub and tree, can be extracted by using NDVI and height value of nDSM. Water and coal pile field was extracted by using NDWI and the standard deviation of DSM method. Height differences also can be used to distinguish buildings from road and vacant land, and accurate building contour information can be extracted by using relationship of neighbor objects and morphological method. The test result shows that the total classification accuracy of the presented method is 90.78% and the kappa coefficient is 0.891 4. 展开更多
关键词 AIRBORNE laser SCANNING GeoEye nDSM OBJECT oriented classification MINING areas
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The Building Extraction Based on Object Oriented Classification Method in High Vegetation Coverage Area 被引量:1
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作者 Baoying Ye Nisha Bao 《Journal of Computer and Communications》 2019年第7期9-16,共8页
Quickly extraction of building information technology is an important application in urban development planning, electronic information, national defense and others. This paper takes Landsat-8 multispectral and panchr... Quickly extraction of building information technology is an important application in urban development planning, electronic information, national defense and others. This paper takes Landsat-8 multispectral and panchromatic data as data source, using the local variance method to select the optimal segmentation scale, normalized difference vegetation index (NDVI) and the normalized building index (NDBI) and panchromatic brightness value of an object oriented classification rule extraction. The high vegetation coverage area of buildings, and through the spatial relationships and distinguishing feature of collections of buildings independent buildings and villages. The results showed that Google earth high resolution image analysis and accuracy evaluation. the results of the extraction based on the overall accuracy of village extraction was 83%, the accuracy of extraction of independent buildings was 70%, according to the L8 remote sensing data, object oriented classification method can quickly and accurately extract the high vegetation coverage area of the building. 展开更多
关键词 oriented classification HIGH VEGETATION COVERAGE Area BUILDING
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An Expert System to Detect Political Arabic Articles Orientation Using CatBoost Classifier Boosted by Multi-Level Features
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作者 Saad M.Darwish Abdul Rahman M.Sabri +1 位作者 Dhafar Hamed Abd Adel A.Elzoghabi 《Computer Systems Science & Engineering》 2024年第6期1595-1624,共30页
The number of blogs and other forms of opinionated online content has increased dramatically in recent years.Many fields,including academia and national security,place an emphasis on automated political article orient... The number of blogs and other forms of opinionated online content has increased dramatically in recent years.Many fields,including academia and national security,place an emphasis on automated political article orientation detection.Political articles(especially in the Arab world)are different from other articles due to their subjectivity,in which the author’s beliefs and political affiliation might have a significant influence on a political article.With categories representing the main political ideologies,this problem may be thought of as a subset of the text categorization(classification).In general,the performance of machine learning models for text classification is sensitive to hyperparameter settings.Furthermore,the feature vector used to represent a document must capture,to some extent,the complex semantics of natural language.To this end,this paper presents an intelligent system to detect political Arabic article orientation that adapts the categorical boosting(CatBoost)method combined with a multi-level feature concept.Extracting features at multiple levels can enhance the model’s ability to discriminate between different classes or patterns.Each level may capture different aspects of the input data,contributing to a more comprehensive representation.CatBoost,a robust and efficient gradient-boosting algorithm,is utilized to effectively learn and predict the complex relationships between these features and the political orientation labels associated with the articles.A dataset of political Arabic texts collected from diverse sources,including postings and articles,is used to assess the suggested technique.Conservative,reform,and revolutionary are the three subcategories of these opinions.The results of this study demonstrate that compared to other frequently used machine learning models for text classification,the CatBoost method using multi-level features performs better with an accuracy of 98.14%. 展开更多
关键词 Political articles orientation detection CatBoost classifier multi-level features context-based classification social networks machine learning stylometric features
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Research on Modeling and Reusing of Computer Numerical Control Software with Object-oriented Technology 被引量:1
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作者 胡俊 王宇晗 +1 位作者 王涛 蔡建国 《Journal of Donghua University(English Edition)》 EI CAS 2001年第3期66-69,共4页
To improve the reusable and configurable ability of computer numerical control ( CNC ) software, a new method to construct reusable model of CNC software with object-oriented (OO) technology is proposed. Based on anal... To improve the reusable and configurable ability of computer numerical control ( CNC ) software, a new method to construct reusable model of CNC software with object-oriented (OO) technology is proposed. Based on analyzing function of CNC software, the article presents how to construct a general class library of CNC software with OO technology. Most function modules of CNC software can he reused because of inheritable capability of classes. Besides, the article analyzes the object relational model in request/report mode, and multitask concurrent management model, which can he applied on double-CPU hardware platform and Windows 95/NT environment. Finally, the method has been successfully applied on a turning CNC system and a milling CNC system, and some function modules have been reused. 展开更多
关键词 CNC Software object- oriented Request/Report Multitask CONCURRENT Process.
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Product Family Design Methodology Using Object-Oriented Approach
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作者 WANG Ai-min, MENG Ming-chen, HUANG Jing-yuan (Department. of Precision Instruments and Mechanology, Tsinghua Univers ity, Beijing 100084, China) 《厦门大学学报(自然科学版)》 CAS CSCD 北大核心 2002年第S1期141-142,共2页
The serious competition environment of global marke t requests the enterprise to change traditional product development strategy and a dopt new theory in order to meet diverse customer needs while maintaining near m a... The serious competition environment of global marke t requests the enterprise to change traditional product development strategy and a dopt new theory in order to meet diverse customer needs while maintaining near m ass production efficiency, which is the main philosophy of mass customization. P roduct family design is research focus at present and also is the core technolog y of DFMC (design for mass customization). Firstly, this paper explores the fund amental issues of product family, such as concepts of modularity, commonality/di versity, product platform and product family architecture etc. We compare the te rminology between product family and object-oriented approach in the next step. Thirdly, this paper puts forwards one product family design methodology based o n product platform and under different phase of product life cycle constrains, f or example, functional, assembly and service etc. At the end section of this pap er, we applied, the object-oriented approach in above mentioned product family design methodology to realize the design process. In one word, this paper propos ed one product family design methodology based on object oriented approach and p roduct life cycle consideration, especially the conjointness of characteristic o f OOA and concepts of product family. The main property of OOA are encapsulation , inherence and polymorphism. Encapsulation can represent the module or building blocks of product family. Inherence can be extended to describe the modularity and commonality, and also be used to construct variant space. Alternative specif ic of product family architecture can be embodied with polymorphism. And fin aly, we give the future work contents. In order to derive the product platform a nd achieve modularity and commonality/diversity, interface management between bu ilding block is necessary. The question is how the OOA can be applied in interfa ce management to get our aim OOA is the basis of many information management sy stem, then the question is how to build one system to manage the information of product family and support mass customization The third question is how to deve lop one computer aided tool to facilitate the application of OOA for product fam ily design, even be used to category of design for mass customization. 展开更多
关键词 product family design product platform object- oriented approach (OOA) product life cycle
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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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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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A Comprehensive Review on Pixel Oriented and Object Oriented Methods for Information Extraction from Remotely Sensed Satellite Images with a Special Emphasis on Cryospheric Applications 被引量:3
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作者 Shridhar D. Jawak Prapti Devliyal Alvarinho J. Luis 《Advances in Remote Sensing》 2015年第3期177-195,共19页
Image classification is one of the most basic operations of digital image processing. The present review focuses on the strengths and weaknesses of traditional pixel-based classification (PBC) and the advances of obje... Image classification is one of the most basic operations of digital image processing. The present review focuses on the strengths and weaknesses of traditional pixel-based classification (PBC) and the advances of object-oriented classification (OOC) algorithms employed for the extraction of information from remotely sensed satellite imageries. The state-of-the-art classifiers are reviewed for their potential usage in urban remote sensing (RS), with a special focus on cryospheric applications. Generally, classifiers for information extraction can be divided into three catalogues: 1) based on the type of learning (supervised and unsupervised), 2) based on assumptions on data distribution (parametric and non-parametric) and, 3) based on the number of outputs for each spatial unit (hard and soft). The classification methods are broadly based on the PBC or the OOC approaches. Both methods have their own advantages and disadvantages depending upon their area of application and most importantly the RS datasets that are used for information extraction. Classification algorithms are variedly explored in the cryosphere for extracting geospatial information for various logistic and scientific applications, such as to understand temporal changes in geographical phenomena. Information extraction in cryospheric regions is challenging, accounting to the very similar and conflicting spectral responses of the features present in the region. The spectral responses of snow and ice, water, and blue ice, rock and shadow are a big challenge for the pixel-based classifiers. Thus, in such cases, OOC approach is superior for extracting information from the cryospheric regions. Also, ensemble classifiers and customized spectral index ratios (CSIR) proved extremely good approaches for information extraction from cryospheric regions. The present review would be beneficial for developing new classifiers in the cryospheric environment for better understanding of spatial-temporal changes over long time scales. 展开更多
关键词 PIXEL Based classification Object oriented classification CRYOSPHERE ANTARCTICA
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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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PESOI: Process Embedded Service-Oriented Architecture 被引量:2
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作者 Wei-Tek Tsai 《软件学报》 EI CSCD 北大核心 2006年第6期1470-1484,共15页
Service-Oriented Architecture (SOA) has drawn significant attention recently, and numerous architecture approaches have been proposed to represent SOA-based applications. The architecture of SOA-based applications is ... Service-Oriented Architecture (SOA) has drawn significant attention recently, and numerous architecture approaches have been proposed to represent SOA-based applications. The architecture of SOA-based applications is different from traditional software architecture, which is mainly static. The architecture of an SOA-based application is dynamic, i.e., the application can be composed at runtime using existing services, and thus the architecture is really determined at runtime, instead of design time. SOA applications have provided a new direction for software architecture study, where the architecture can be dynamically changed at runtime to meet the new application requirements. This paper proposes a Process-Embedded Service-Oriented Infrastructure to build SOA-based applications. This infrastructure embeds the entire software lifecycle management and service-oriented system engineering into the application developed on this infrastructure. Thus, the users can easily re-develop the applications during operation to meet the changing environments and requirements, through the supports provided by the embedded infrastructure. 展开更多
关键词 服务导向处理 服务导向体系 软件体系 结构分类
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Product Image Classification Based on Fusion Features
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作者 杨晓慧 刘静静 杨利军 《Chinese Quarterly Journal of Mathematics》 2015年第3期429-441,共13页
Two key challenges raised by a product images classification system are classification precision and classification time. In some categories, classification precision of the latest techniques, in the product images cl... Two key challenges raised by a product images classification system are classification precision and classification time. In some categories, classification precision of the latest techniques, in the product images classification system, is still low. In this paper, we propose a local texture descriptor termed fan refined local binary pattern, which captures more detailed information by integrating the spatial distribution into the local binary pattern feature. We compare our approach with different methods on a subset of product images on Amazon/e Bay and parts of PI100 and experimental results have demonstrated that our proposed approach is superior to the current existing methods. The highest classification precision is increased by 21% and the average classification time is reduced by 2/3. 展开更多
关键词 product image classification FAN refined local binary pattern(FRLBP) PYRAMID HISTOGRAM of orientated gradients(PHOG) FUSION FEATURES
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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 ZhongPing1,SHEN WenMing1,WEI Bin1,LIU XiaoMan1,SU Wei2,ZHANG Chao2 & YANG JianYu2 1 Satellite Environment Center,Ministry of Environmental Protection,Beijing 100094,China 2 College of Information and Electrical Engineering,China Agricultural University,Beijing 100083,China 《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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Semantic-Oriented Sentiment Classification for Chinese Product Reviews: An Experimental Study of Book and Cell Phone Reviews 被引量:7
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作者 YE Qiang LI Yijun ZHANG Yiwen 《Tsinghua Science and Technology》 SCIE EI CAS 2005年第z1期797-802,共6页
Sentiment classification is an automatic opinion classification method to classify the product reviews on web into positive or negative opinions to help consumers or sellers to understand the opinions and evaluations ... Sentiment classification is an automatic opinion classification method to classify the product reviews on web into positive or negative opinions to help consumers or sellers to understand the opinions and evaluations from existing customers. Semantic-oriented approach is one of the recent developments in sentiment classification. Up to now, most research of sentiment classification is on English reviews,and little work has been done on Chinese reviews using sentiment classification. The detailed techniques used in English review cannot be applied directly to Chinese reviews due to the different characteristics between these two languages. This study modified and improved the semantic-oriented approach to a 6-step process for Chinese review, focusing on the modification and improvement on the text segmentation and reference words pairs (RWPs) identification. Two experiments were conducted on book reviews and cell phone reviews. The results show that the performances of the proposed approach are comparable to those of the existing English reviews classification studies. 展开更多
关键词 SENTIMENT classification Chinese CUSTOMER REVIEWS BOOKS cell phones semantic orientation
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双向拉伸聚乙烯薄膜专用料的结构剖析 被引量:1
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作者 关莉 杨帆 《现代塑料加工应用》 CAS 北大核心 2024年第1期52-55,共4页
利用凝胶渗透色谱仪(GPC)、差示扫描量热仪(DSC)和核磁共振波谱仪(NMR)等对2种进口双向拉伸聚乙烯(BOPE)薄膜专用料(SP3022和TF80)和国产茂金属线型低密度聚乙烯(mLLDPE)薄膜专用料(EZP2010HA)的结构和性能进行了分析对比。结果表明:与E... 利用凝胶渗透色谱仪(GPC)、差示扫描量热仪(DSC)和核磁共振波谱仪(NMR)等对2种进口双向拉伸聚乙烯(BOPE)薄膜专用料(SP3022和TF80)和国产茂金属线型低密度聚乙烯(mLLDPE)薄膜专用料(EZP2010HA)的结构和性能进行了分析对比。结果表明:与EZP2010HA相比,SP3022和TF80的熔体流动速率更低,相对分子质量及其分布更宽,密度、熔融温度、结晶温度、结晶度均更高,厚晶片含量更多,剪切黏度更小,更适合双向拉伸加工。 展开更多
关键词 双向拉伸聚乙烯 共聚单体 热分级 晶片厚度
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基于Gaofen-2影像和面向对象的椰子林分类研究
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作者 罗红霞 戴声佩 +4 位作者 李茂芬 李海亮 胡盈盈 郑倩 禹萱 《热带作物学报》 CSCD 北大核心 2024年第5期1021-1030,共10页
椰子是重要的热带经济作物,海南椰子种植面积占全国的90%以上。快速获取椰子种植面积及其空间分布信息对热带作物产业规划具有十分重要的作用。本研究基于国产Gaofen-2高分辨率卫星影像,以文昌市东郊镇为试验区,开展椰子林遥感分类研究... 椰子是重要的热带经济作物,海南椰子种植面积占全国的90%以上。快速获取椰子种植面积及其空间分布信息对热带作物产业规划具有十分重要的作用。本研究基于国产Gaofen-2高分辨率卫星影像,以文昌市东郊镇为试验区,开展椰子林遥感分类研究。基于最优分割尺度的面向对象分类方法,选取4个光谱特征、5个植被指数和32个纹理特征为辅助参量,构建了4种不同的面向对象分类组合(光谱特征、光谱特征+纹理特征组合、光谱特征+植被指数组合、光谱特征+纹理特征+植被指数特征组合)进行椰子林分类提取,并与基于像元的椰子林分类结果进行对比分析。结果表明:(1)仅采用基于像元分类方法,椰子林的总体分类精度(overall accuracy,OA)和用户精度(user’s accuracy,UA)分别达到87.05%和85.21%。(2)相比基于像元分类,4种面向对象分类组合的OA值提高了5.51%~8.72%。(3)光谱特征和纹理特征组合提取椰子林分类结果最优,OA值和UA值分别达到95.77%和97.15%;光谱特征和植被指数的组合也得到了较好的分类结果,OA值和UA值分别为94.88%和94.42%;所有的光谱特征、植被指数和纹理特征全部参与分类得到的OA值和UA值分别为94.67%和94.17%,低于仅使用光谱特征或者植被指数的组合。综上,国产高分辨率Gaofen-2影像在椰子林遥感精准识别中具有很大的潜力,结合纹理特征的面向对象分类方法可以更准确地提取椰子林分类信息,研究结果可为多云多雨地区大尺度椰子林遥感识别提供技术参考。 展开更多
关键词 椰子林 面向对象分类 分割尺度 Gaofen-2影像
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以深入调研推动应用型大学建设——基于潘懋元先生的治学实践
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作者 李岩 孔繁敏 薛储佳 《北京联合大学学报》 CAS 2024年第5期35-40,共6页
教育转型背景下高水平应用型大学的建设,是高等学校分类发展与自量定位的必然路径之一。潘懋元先生以调研推动应用型本科院校建设,将调研过程中形成的理论成果应用于工作实践,深刻影响并促进了北京联合大学应用型办学之路的建设和发展... 教育转型背景下高水平应用型大学的建设,是高等学校分类发展与自量定位的必然路径之一。潘懋元先生以调研推动应用型本科院校建设,将调研过程中形成的理论成果应用于工作实践,深刻影响并促进了北京联合大学应用型办学之路的建设和发展。潘懋元先生通过调整教学理念、改革教学方法、实践促进教学等措施,以办学定位“三分法”、调研检验理论、理论指导调研的模式,不断推进高水平应用型大学的建设。 展开更多
关键词 潘懋元 应用型大学 调研 治学实践 高校分类
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基于哨兵2号数据的撂荒地识别与分析——以甘肃省麦积区为例
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作者 王瑞君 杨斌斌 吕志鹏 《安徽农业科学》 CAS 2024年第22期70-74,共5页
以甘肃省麦积区为研究区域,采用哨兵2号遥感卫星数据,并基于面向对象的方法对该区域的撂荒地进行了识别,分类总体精度达到92%,Kappa系数为0.82。空间统计结果显示,麦积区的撂荒地面积为12600.31 hm^(2),占麦积区总面积的3.62%,占耕地总... 以甘肃省麦积区为研究区域,采用哨兵2号遥感卫星数据,并基于面向对象的方法对该区域的撂荒地进行了识别,分类总体精度达到92%,Kappa系数为0.82。空间统计结果显示,麦积区的撂荒地面积为12600.31 hm^(2),占麦积区总面积的3.62%,占耕地总面积的22.02%。坡度分析和交通条件分析发现,地形因素和交通条件是导致撂荒的重要原因。对麦积区的撂荒地进行空间自相关分析发现,撂荒地存在显著的空间集聚特征。 展开更多
关键词 撂荒地 哨兵2号 面向对象图像分类 空间自相关
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基于“布鲁姆认知—成果导向”的“机车制动系统”课程教学模式研究
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作者 王晓琴 《时代汽车》 2024年第13期37-39,共3页
文章针对“机车制动系统”课程中存在的教学模式单一,教学资源缺乏系统性,教学评价不全面等问题,进一步将先进的教育理念深度地融入混合型教学中,提出一种基于布鲁姆认知目标理论和成果导向教育理念的“机车制动系统”课程教学模式研究... 文章针对“机车制动系统”课程中存在的教学模式单一,教学资源缺乏系统性,教学评价不全面等问题,进一步将先进的教育理念深度地融入混合型教学中,提出一种基于布鲁姆认知目标理论和成果导向教育理念的“机车制动系统”课程教学模式研究,研究结果表明对该课程进行改革与实践研究具有非常大的意义,可以为其他专业核心课程的建设与改革做一次有益的探索和尝试。 展开更多
关键词 布鲁姆认知目标分类 成果导向 机车制动系统
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基于无人机遥感影像和面向对象技术的荒漠草原植被分类 被引量:1
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作者 佘洁 沈爱红 +7 位作者 石云 赵娜 张风红 何洪源 吴涛 李红霞 马益婷 朱晓雯 《草业学报》 CSCD 北大核心 2024年第7期1-14,共14页
探究适合荒漠草原植被遥感分类方法,明确荒漠草原地区植物物种类型及其分布状况,可以提高荒漠草原精细化生物多样性监测能力,对于荒漠草原的保护管理与生态可持续发展均具有重要意义。以贺兰山东麓洪积扇荒漠草原典型植被短花针茅、松... 探究适合荒漠草原植被遥感分类方法,明确荒漠草原地区植物物种类型及其分布状况,可以提高荒漠草原精细化生物多样性监测能力,对于荒漠草原的保护管理与生态可持续发展均具有重要意义。以贺兰山东麓洪积扇荒漠草原典型植被短花针茅、松叶猪毛菜、刺旋花、斑子麻黄为研究对象,利用无人机遥感影像,采用面向对象的分类回归树(classification and regression tree,CART)、K最邻近(K-nearest neighbor,KNN)、随机森林(random forest,RF)和支持向量机(support vector machine,SVM)分类方法,结合特征优选算法对影像特征进行优选,在此基础上选择最优特征进行荒漠草原植被精细化分类研究。结果表明:1)特征优选能够有效提高分类精度,应予以充分利用,当选取的特征组合为贡献度大于1.00%时,分类精度最高;2)基于无人机遥感影像挖掘的植被光谱、纹理特征,结合面向对象分类方法能有效实现贺兰山东麓荒漠草原典型植被精细化分类,其中RF分类精度最高,分类总体精度达到87.77%,Kappa系数为0.79。研究结果可为荒漠草原植被分类研究提供参考,对荒漠草原生物多样性保护管理与生态可持续发展均具有重要意义。 展开更多
关键词 无人机遥感 面向对象 特征优选 荒漠草原 植被分类
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