04240nam 22007095 450 991058859160332120251113200340.0981-19-3739-710.1007/978-981-19-3739-2(MiAaPQ)EBC7076036(Au-PeEL)EBL7076036(CKB)24723841600041(PPN)264197143(OCoLC)1342593577(DE-He213)978-981-19-3739-2(EXLCZ)992472384160004120220818d2022 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierRemote Sensing Intelligent Interpretation for Mine Geological Environment From Land Use and Land Cover Perspective /by Weitao Chen, Xianju Li, Lizhe Wang1st ed. 2022.Singapore :Springer Nature Singapore :Imprint: Springer,2022.1 online resource (254 pages)Earth and Environmental Science SeriesPrint version: Chen, Weitao Remote Sensing Intelligent Interpretation for Mine Geological Environment Singapore : Springer,c2022 9789811937385 Preface.-Mine geological environment: An overview.-Multimodal remote sensing science and technology.-Deep learning technology for remote sensing intelligent interpretation.-Remote sensing interpretation signs of mine land occupation type -- Mine remote sensing dataset construction for multi-level tasks -- Mine target detection by remote sensing and deep learning -- Mine remote sensing scene classification by deep learning -- Mine land occupation classification based on machine learning and remote sensing images -- Mine land occupation classification based on deep learning and remote sensing images -- Concluding remarks.This book examines the theory and methods of remote sensing intelligent interpretation based on deep learning. Based on geological and environmental effects on mines, this book constructs a set of systematic mine remote sensing datasets focusing on the multi-level task with the system of “target detection→scene classification→semantic segmentation." Taking China’s Hubei Province as an example, this book focuses on the following four aspects: 1. Development of a multiscale remote sensing dataset of the mining area, including mine target remote sensing dataset, mine (including non-mine areas) remote sensing scene dataset, and semantic segmentation remote sensing dataset of mining land cover. The three datasets are the basis of intelligent interpretation based on deep learning. 2. Research on mine target remote sensing detection method based on deep learning. 3. Research on remote sensing scene classification method of mine and non-mine areas based on deep learning. 4. Research on the fine-scale classification method of mining land cover based on semantic segmentation. The book is a valuable reference both for scholars, practitioners and as well as graduate students who are interested in mining environment research.Earth and Environmental Science SeriesGeographic information systemsMachine learningSignal processingGeologyEnvironmental monitoringGeographical Information SystemMachine LearningSignal, Speech and Image ProcessingGeologyEnvironmental MonitoringGeographic information systems.Machine learning.Signal processing.Geology.Environmental monitoring.Geographical Information System.Machine Learning.Signal, Speech and Image Processing.Geology.Environmental Monitoring.006.31Chen Weitao1254062Li XianjuWang Lizhe1974-MiAaPQMiAaPQMiAaPQBOOK9910588591603321Remote sensing intelligent interpretation for mine geological environment3363944UNINA