Statistical Geoinformatics for Human Environment Interface: Chapman & Hall/CRC Applied Environmental Statistics
Autor Wayne L. Myers, Ganapati P. Patilen Limba Engleză Hardback – aug 2012
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Specificații
ISBN-13: 9781420082876
ISBN-10: 1420082876
Pagini: 213
Ilustrații: 50 b/w images
Dimensiuni: 157 x 236 x 18 mm
Greutate: 0.52 kg
Editura: CRC Press
Seria Chapman & Hall/CRC Applied Environmental Statistics
ISBN-10: 1420082876
Pagini: 213
Ilustrații: 50 b/w images
Dimensiuni: 157 x 236 x 18 mm
Greutate: 0.52 kg
Editura: CRC Press
Seria Chapman & Hall/CRC Applied Environmental Statistics
Public țintă
Students and researchers in spatial sciences and statistics.Cuprins
Statistical Geoinformatics of Human Linkage with Environment Introduction Human Environment Informational Interface and Its Indicators The "-matics" of Geoinformatics Spatial Synthesis of Disparate Data by Localization as Vicinity Variates Spatial Posting of Tabulations (SPOTing) Exemplifying County Context Posting Points and Provisional Proximity Perimeters for Lackawanna County Surveillance with Software Sentinels Backdrop: Distributed Data Depots and Digital Delivery Localizing Fixed-Form Features Introduction Locality Layer as Poly-Place Purview Localizing Layer of Proximity Perimeters Localizing Linears by Determining Densities Transfer from Perimeters to Points Apportioning Attributes of Partial Polygons Backdrop: GIS Generics Precedence and Patterns of Propensity Introduction Prescribing Precedence Product-Order Precedence Protocol Precedence Plot Propensities as Progression of Precedence Progression Plot Reversing Ranks Inconsistency Indicator Backdrop: Statistical Software Raster-Referenced Cellular Codings and Map Modeling Introduction Fixed-Frame Micromapping with Conceptual Cells Cover Classes and Localizing Logic Raster Regions and Associated Attributes Map Modeling Layer Logic Similar Settings as Clustered Components Introduction CLAN Clusters CLUMP Clusters CLAN Cluster Centroids Salient Centroids Graded Groups by Representative Ranks Rank Rods Salient Sequences by Representative Ranks Intensity Images and Map Multimodels Introduction Intensity as Frequency of Occurrence Hillshades and Slopes Interposed Distance Indicators Backdrop: Pictures as Pixels and Remote Sensing High Spots, Hot Spots, and Scan Statistics Introduction SaTScan(t) Concentration of CIT Core Development Complexion of CIT Developments Particular Proximity Upper Level Set (ULS) Scanning Backdrop: Python Programming Shape, Support, and Partial Polygons Introduction Inscribed Octagons Matching Margins and Adjusting Areas Shape and Support for Local Roads Precedence Plot for Shapes and Supports Supports Spanning Several Partial Polygons Semisynchronous Signals and Variant Vicinities Introduction Distal Data Median Models Pairing/Placement Patterns of Signal Strengths Auto-Association: Local Likeness and Distance Decline Introduction Cluster Companions Kindred Clusters Local Averages LISA: Local Indicator of Spatial Association Picking Pairs at Lagged Locations Empirical (Semi-)Variogram Moran's I and Similar Spatial Statistics Regression Relations for Spatial Stations Introduction Trend Surfaces Regression Relations among Vicinity Variates Restricted Regression Spatial Stations as Surface Samples Introduction Interpolating Intensity Indicators as Smooth Surfaces Spline Smoothing Kriging Shifting Spatial Structure Introduction Space-Time Hotspots Salient Shifts Paired Plots Primary Partition Plots Backdrop: Spectral Detection of Change with Remote Sensing Synthesis and Synopsis with Allegheny Application Introduction Localization Logic Locality Layer Localizing Layer Poly-Place Purviews Significant Spatial Sectors with Scan Statistics Scale Sensitivity and Partial Precedence Cluster Components and Cluster Companions Trend Surfaces Surveillance Systems: Sentinel Stations and Signaling Scripted Sentinels Smart-Sentinel Socialization Index References appear at the end of each chapter.
Notă biografică
Wayne L. Myers is Professor Emeritus of Forest Biometrics at the Pennsylvania State University. He is a Certified Forester of the Society of American Foresters, an Emeritus Member of the American Society of Photogrammetry and Remote Sensing, and a 40-year member of the American Statistical Association. Dr. Myers specializes in landscape analysis using GIS and remote sensing in conjunction with multivariate approaches to analysis and prioritization. Ganapati P. Patil is Director of the Center for Statistical Ecology and Environmental Statistics and Distinguished Professor Emeritus of Mathematical and Environmental Statistics at the Pennsylvania State University. He is a fellow of the American Statistical Association, American Association of Advancement of Science, Institute of Mathematical Statistics, International Statistical Institute, Royal Statistical Society, International Association for Ecology, International Indian Statistical Association, Indian National Institute of Ecology, and Indian Society for Medical Statistics. Dr. Patil has served on panels for numerous international organizations, including the United Nations Environment Programme, U.S. National Science Foundation, U.S. Environmental Protection Agency, U.S. Forest Service, and U.S. National Marine Fisheries Service. He has authored/coauthored more than 300 research papers and more than 30 cross-disciplinary volumes.