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Each year, natural hazards such as earthquakes, cyclones, flooding, landslides, wildfires, avalanches, volcanic eruption, extreme temperatures, storm surges, drought, etc., result in widespread loss of life, livelihood, and critical infrastructure globally. With the unprecedented growth of the human population, largescale development activities, and changes to the natural environment, the frequency and intensity of extreme natural events and consequent impacts are expected to increase in the future.Technological interventions provide essential provisions for the prevention and mitigation of natural hazards. The data obtained through remote sensing systems with varied spatial, spectral, and temporal resolutions particularly provide prospects for furthering knowledge on spatiotemporal patterns and forecasting of natural hazards. The collection of data using earth observation systems has been valuable for alleviating the adverse effects of natural hazards, especially with their near real-time capabilities for tracking extreme natural events. Remote sensing systems from different platforms also serve as an important decision-support tool for devising response strategies, coordinating rescue operations, and making damage and loss estimations.With these in mind, this book seeks original contributions to the advanced applications of remote sensing and geographic information systems (GIS) techniques in understanding various dimensions of natural hazards through new theory, data products, and robust approaches.
Research & information: general --- Geography --- sequential estimation --- InSAR time series --- groundwater --- land subsidence and rebound --- earthquake --- rapid mapping --- damage assessment --- deep learning --- convolutional neural networks --- ordinal regression --- aerial image --- landslide --- machine learning models --- remote sensing --- ensemble models --- validation --- ice storm --- forest ecosystems --- disaster impact --- post-disaster recovery --- ice jam --- snowmelt --- flood mapping --- monitoring and prediction --- VIIRS --- ABI --- NUAE --- flash flood --- BRT --- CART --- naive Bayes tree --- geohydrological model --- landslide susceptibility --- Bangladesh --- digital elevation model --- random forest --- modified frequency ratio --- logistic regression --- automatic landslide detection --- OBIA --- PBA --- random forests --- supervised classification --- landslides --- uncertainty --- K-Nearest Neighbor --- Multi-Layer Perceptron --- Random Forest --- Support Vector Machine --- agriculture --- drought --- NDVI --- MODIS --- landslide deformation --- InSAR --- reservoir water level --- Sentinel-1 --- Three Gorges Reservoir area (China) --- peri-urbanization --- urban growth boundary demarcation --- climate change --- climate migrants --- natural hazards --- flooding --- land use and land cover --- night-time light data --- Dhaka
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Each year, natural hazards such as earthquakes, cyclones, flooding, landslides, wildfires, avalanches, volcanic eruption, extreme temperatures, storm surges, drought, etc., result in widespread loss of life, livelihood, and critical infrastructure globally. With the unprecedented growth of the human population, largescale development activities, and changes to the natural environment, the frequency and intensity of extreme natural events and consequent impacts are expected to increase in the future.Technological interventions provide essential provisions for the prevention and mitigation of natural hazards. The data obtained through remote sensing systems with varied spatial, spectral, and temporal resolutions particularly provide prospects for furthering knowledge on spatiotemporal patterns and forecasting of natural hazards. The collection of data using earth observation systems has been valuable for alleviating the adverse effects of natural hazards, especially with their near real-time capabilities for tracking extreme natural events. Remote sensing systems from different platforms also serve as an important decision-support tool for devising response strategies, coordinating rescue operations, and making damage and loss estimations.With these in mind, this book seeks original contributions to the advanced applications of remote sensing and geographic information systems (GIS) techniques in understanding various dimensions of natural hazards through new theory, data products, and robust approaches.
sequential estimation --- InSAR time series --- groundwater --- land subsidence and rebound --- earthquake --- rapid mapping --- damage assessment --- deep learning --- convolutional neural networks --- ordinal regression --- aerial image --- landslide --- machine learning models --- remote sensing --- ensemble models --- validation --- ice storm --- forest ecosystems --- disaster impact --- post-disaster recovery --- ice jam --- snowmelt --- flood mapping --- monitoring and prediction --- VIIRS --- ABI --- NUAE --- flash flood --- BRT --- CART --- naive Bayes tree --- geohydrological model --- landslide susceptibility --- Bangladesh --- digital elevation model --- random forest --- modified frequency ratio --- logistic regression --- automatic landslide detection --- OBIA --- PBA --- random forests --- supervised classification --- landslides --- uncertainty --- K-Nearest Neighbor --- Multi-Layer Perceptron --- Random Forest --- Support Vector Machine --- agriculture --- drought --- NDVI --- MODIS --- landslide deformation --- InSAR --- reservoir water level --- Sentinel-1 --- Three Gorges Reservoir area (China) --- peri-urbanization --- urban growth boundary demarcation --- climate change --- climate migrants --- natural hazards --- flooding --- land use and land cover --- night-time light data --- Dhaka
Choose an application
Each year, natural hazards such as earthquakes, cyclones, flooding, landslides, wildfires, avalanches, volcanic eruption, extreme temperatures, storm surges, drought, etc., result in widespread loss of life, livelihood, and critical infrastructure globally. With the unprecedented growth of the human population, largescale development activities, and changes to the natural environment, the frequency and intensity of extreme natural events and consequent impacts are expected to increase in the future.Technological interventions provide essential provisions for the prevention and mitigation of natural hazards. The data obtained through remote sensing systems with varied spatial, spectral, and temporal resolutions particularly provide prospects for furthering knowledge on spatiotemporal patterns and forecasting of natural hazards. The collection of data using earth observation systems has been valuable for alleviating the adverse effects of natural hazards, especially with their near real-time capabilities for tracking extreme natural events. Remote sensing systems from different platforms also serve as an important decision-support tool for devising response strategies, coordinating rescue operations, and making damage and loss estimations.With these in mind, this book seeks original contributions to the advanced applications of remote sensing and geographic information systems (GIS) techniques in understanding various dimensions of natural hazards through new theory, data products, and robust approaches.
Research & information: general --- Geography --- sequential estimation --- InSAR time series --- groundwater --- land subsidence and rebound --- earthquake --- rapid mapping --- damage assessment --- deep learning --- convolutional neural networks --- ordinal regression --- aerial image --- landslide --- machine learning models --- remote sensing --- ensemble models --- validation --- ice storm --- forest ecosystems --- disaster impact --- post-disaster recovery --- ice jam --- snowmelt --- flood mapping --- monitoring and prediction --- VIIRS --- ABI --- NUAE --- flash flood --- BRT --- CART --- naive Bayes tree --- geohydrological model --- landslide susceptibility --- Bangladesh --- digital elevation model --- random forest --- modified frequency ratio --- logistic regression --- automatic landslide detection --- OBIA --- PBA --- random forests --- supervised classification --- landslides --- uncertainty --- K-Nearest Neighbor --- Multi-Layer Perceptron --- Random Forest --- Support Vector Machine --- agriculture --- drought --- NDVI --- MODIS --- landslide deformation --- InSAR --- reservoir water level --- Sentinel-1 --- Three Gorges Reservoir area (China) --- peri-urbanization --- urban growth boundary demarcation --- climate change --- climate migrants --- natural hazards --- flooding --- land use and land cover --- night-time light data --- Dhaka --- sequential estimation --- InSAR time series --- groundwater --- land subsidence and rebound --- earthquake --- rapid mapping --- damage assessment --- deep learning --- convolutional neural networks --- ordinal regression --- aerial image --- landslide --- machine learning models --- remote sensing --- ensemble models --- validation --- ice storm --- forest ecosystems --- disaster impact --- post-disaster recovery --- ice jam --- snowmelt --- flood mapping --- monitoring and prediction --- VIIRS --- ABI --- NUAE --- flash flood --- BRT --- CART --- naive Bayes tree --- geohydrological model --- landslide susceptibility --- Bangladesh --- digital elevation model --- random forest --- modified frequency ratio --- logistic regression --- automatic landslide detection --- OBIA --- PBA --- random forests --- supervised classification --- landslides --- uncertainty --- K-Nearest Neighbor --- Multi-Layer Perceptron --- Random Forest --- Support Vector Machine --- agriculture --- drought --- NDVI --- MODIS --- landslide deformation --- InSAR --- reservoir water level --- Sentinel-1 --- Three Gorges Reservoir area (China) --- peri-urbanization --- urban growth boundary demarcation --- climate change --- climate migrants --- natural hazards --- flooding --- land use and land cover --- night-time light data --- Dhaka
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This book collects 15 papers written by renowned scholars from across the globe that showcase the forefront research in Earth observation (EO), remote sensing (RS), and geoscientific ground investigations to study archaeological records and cultural heritage.Archaeologists, anthropologists, geographers, remote sensing, and archaeometry experts share their methodologies relying on a wealth of techniques and data including, but not limited to: very high resolution satellite images from optical and radar space-borne sensors, air-borne surveys, geographic information systems (GIS), archaeological fieldwork, and historical maps.A couple of the contributions highlight the value of noninvasive and nondestructive laboratory analyses (e.g., neutron diffraction) to reconstruct ancient manufacturing technologies, and of geological ground investigations to corroborate hypotheses of historical events that shaped cultural landscapes.Case studies encompass famous UNESCO World Heritage Sites (e.g., the Nasca Lines in Peru), remote and yet-to-discover archaeological areas in tropical forests in central America, European countries, south Asian changing landscapes, and environments which are arid nowadays but were probably full of woody vegetation in the past.Finally, the reader can learn about the state-of-the-art of education initiatives to train site managers in the use of space technologies in support of their activities, and can understand the legal aspects involved in the application of EO and RS to address current challenges of African heritage preservation.
settlements --- historical landscapes --- floods --- landscape archaeology --- education --- archaeological fieldwork --- Burial Mound --- geoglyph Pista --- OBIA --- satellite imagery --- multi-criteria --- airborne LiDAR --- international law --- Survey of India --- mapping --- Landscape --- Africa --- heritage --- Belize --- relict boundaries --- capacity development --- synthetic aperture radar --- disaster and conservation management --- Motte-and-Bailey castle --- neutron techniques --- Cuenca Pisco --- grain-size --- geological mapping --- Peru --- Visualization --- drones --- volcaniclastic layer --- UAV --- Harra --- stratigraphy --- Archaeology --- e-learning --- field reconnaissance --- neutron diffraction --- archaeological prospection --- Jordan --- Mesoamerica --- predictive model --- Ridge and Furrow --- Mega El Niño --- Earth Observation --- archaeological landscapes --- colonial studies --- river morphology --- pampa of Nazca --- optical --- Boundary Demarcation --- space law --- orthophotographs --- Oman --- GoogleEarth --- archaeometry --- Cameroon-Nigeria Mixed Commission --- national archaeological mapping programme --- Maya --- Sacred --- subsurface imaging --- basalt desert --- Indus --- archaeological survey --- Sentinel-2 --- surface survey --- Ritual --- remote sensing --- microwave penetration --- Difference Map --- drone --- tumuli --- GIS --- international boundaries --- Lidar --- Caves --- Archaeological Survey of India --- chemometric analysis --- UNESCO --- Rio Grande de Nazca --- SAR --- photogrammetry --- Earth observation --- arid environments --- Sumerian pottery --- cultural and natural heritage --- free satellite imagery --- field monument --- RPAS --- archaeology --- historical maps --- satellite --- petrography --- automated detection --- pattern recognition --- Arran --- LiDAR --- airborne laser scanning --- landscape accessibility --- Geographic Information System (GIS) --- Bing Maps --- analytic hierarchy process (AHP) --- Roman archaeology --- Saharan Morocco
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