Da Xiong Mao Qi Xi Di Kong Jian Guan Ce Ji Shu Yu Fang Fa: Techniques and Methods - Couverture rigide

Wang, Xinyuan; Zhen, Jing; Meng, Qingkai

 
9789811987939: Da Xiong Mao Qi Xi Di Kong Jian Guan Ce Ji Shu Yu Fang Fa: Techniques and Methods

Synopsis

This book evaluates the past, present, and future habitat suitability of giant pandas based on spatial observation technology involving optical remote sensing, microwave remote sensing, and LiDAR to discover the mysterious ecological environment of giant panda habitat.

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À propos de l?auteur

Dr. Xinyuan Wang is Professor at the Aerospace Information Research Institute(AIR), Chinese Academy of Sciences. He is also serving as Deputy Director of International Centre on Space Technologies for Natural and Cultural Heritage (HIST) under the Auspices of UNESCO, Chair of Digital Heritage Specialized Committee of China National Committee, International Society for Digital Earth (ISDE), Co-Chair of the Heritage Working Group of the Digital Belt and Road Programme (DBAR), Member of International Council on Monuments and Sites (ICOMOS), and Member of the world heritage Expert Committee of the State Forestry and Grass Administration of China.

Prof. Wang is engaged in the research of remote sensing archeology and digital heritage conservation and application. He had published more than 180 papers and 5 books and published "Context Environment Map of World Cultural Heritage Sites along the Silk Road".

Dr. Jing Zhen is Associate Professor of the Aerospace Information Research Institute (AIR), Chinese Academy of Sciences. She was engaged in the research of remote sensing satellite data acquisition and remote sensing thematic information extraction for more than 20 years. She is also Key Member of International Centre on Space Technologies for Natural and Cultural Heritage (HIST) under the Auspices of UNESCO. Recently, she mainly focused on research of the evaluation and prediction of the impact of climate change on the habitat of giant panda. Based on multi-source remote sensing data and field verification, she has carried out fine-scale evaluation of giant panda habitats and countermeasures against the impacts of climate change. Relevant research results have been published in sustainability of MDPI and the monograph "Space Observation Techniques and Methods of Giant Panda Habitat" published by Science Press. At present, Dr. Zhen is looking forward to do cooperation research with friends all over the world on the impact of climate change and contribute to the monitoring, protection, and sustainable development of world heritage sites.

Dr. Qingkai Meng is Professor at the Institute of Mountain Hazards and Environment (IMHE), Chinese Academy of Sciences. He is also serving as Associate Fellow of International Consortium on Landslides (ICL), Key Member of international network on landslide early warning systems (LandAware), and Member of European Geosciences Union(EGU). He was engaged in the research of landslide monitoring, recognition, early warning, and evaluation by interferometric SAR and multi-remote sensing analysis. He has carried out experiments of various landslide deformation mechanisms in giant panda world heritage sites, Loess Plateau, and Qinghai-Tibet Plateau. He had published more than 10 peer-reviewed papers with high impact index. At present, Dr. Meng is looking forward to do cooperation research with friends all over the world on the landslide science induced by climate change, especially in Qinghai-Tibet Plateau, and contributes to provide sustainable and consolidate monitoring strategy for risk mitigation and prevention.

Les informations fournies dans la section « A propos du livre » peuvent faire référence à une autre édition de ce titre.

Autres éditions populaires du même titre

9789811987960: Spatial Observation of Giant Panda Habitat: Techniques and Methods

Edition présentée

ISBN 10 :  9811987963 ISBN 13 :  9789811987960
Editeur : Springer Verlag, Singapore, 2024
Couverture souple