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An Intelligent Learning Algorithm for Improving BIM Object Classification and Recognition
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作者 WANG Ru BENMANSOUR Oussama XING Ying 《施工技术(中英文)》 CAS 2024年第20期86-93,共8页
Building information modeling(BIM)object classification takes a lot of time and energy.Misclassification or omission of any object may lead to the emergence of abnormal results,which have a great impact on the project... Building information modeling(BIM)object classification takes a lot of time and energy.Misclassification or omission of any object may lead to the emergence of abnormal results,which have a great impact on the project workflow and results.Roundly understanding BIM object classification,by improving Swin Transformer classifier algorithm parameters,using the model primitives extracted from IFC format BIM model file,deep learning of 7 types of BIM object categories is taken.Through the performance and evaluation indicators obtained in training,the results improve the classification accuracy. 展开更多
关键词 building information modeling(BIM) object classification deep learning model primitive performance
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基于UML的数据库建模技术研究 被引量:9
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作者 雷超阳 钟一青 周训斌 《自动化技术与应用》 2008年第9期33-36,29,共5页
论文主要探讨以UML对象类图作为数据库建模的方法:在UML的对象类中得到关系模式的键,把关联的多重性分配到关系模式中去,把泛化(继承)联系转换为关系模式,把行为(操作)转换为触发器和存储过程;从而将UML与关系数据库技术相结合,方便数... 论文主要探讨以UML对象类图作为数据库建模的方法:在UML的对象类中得到关系模式的键,把关联的多重性分配到关系模式中去,把泛化(继承)联系转换为关系模式,把行为(操作)转换为触发器和存储过程;从而将UML与关系数据库技术相结合,方便数据库的设计。 展开更多
关键词 UML E-R 对象() 关系模式
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Identifying Alpine Wetlands in the Damqu River Basin in the Source Area of the Yangtze River Using Object-based Classification Method 被引量:2
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作者 张继平 张镱锂 +2 位作者 刘林山 丁明军 张学儒 《Journal of Resources and Ecology》 CSCD 2011年第2期186-192,共7页
Alpine wetlands are very sensitive to global change, have great impacts on the hydrological condition of rivers, and are closely related to peoples' living in lower reaches. It is essential to monitor alpine wetland ... Alpine wetlands are very sensitive to global change, have great impacts on the hydrological condition of rivers, and are closely related to peoples' living in lower reaches. It is essential to monitor alpine wetland changes to appropriately manage and protect wetland resources; however, it is quite difficult to accurately extract such information from remote sensing images due to spectral confusion and arduous field verification. In this study, we identified different wetland types in the Damqu River Basin located in the Yangze River source region from Landsat remote sensing data using the object-based method. In order to ensure the interpretation accuracy of wetland, a digital elevation model (DEM) and its derived data (slope, aspect), Normalized Difference Vegetation Index (NDVI), Normalized Difference Water Index (NDWI), and Kauth-Thomas transformation were considered as the components of the spectral characteristics of wetland types. The spectral characteristics, texture features and spatial structure characteristics of each wetland type were comprehensively analyzed based on the success of image segmentation. The extraction rules for each wetland type were established by determining the thresholds of the spatial, texture and spectral attributes of typical parameter layers according to their histogram statistics. The classification accuracy was assessed using error matrixes and field survey verification data. According to the accuracy assessment, the total accuracy of image classification was 89%. 展开更多
关键词 alpine wetland remote sensing object-based classification Damqu River Basin
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