Puzzle Zeitvertreib Beste 4K Filme Beste Multimedia-Lernspiele % SALE %

Mapping Forest Landscape Patterns


Mapping Forest Landscape Patterns
149.15 CHF
Versandkostenfrei

Lieferzeit: 7-14 Werktage

  • 10419228


Beschreibung

Preface
Chapter 1: Mapping forest landscapes: overview and a primer1. Mapping forest landscapes: an introduction1.1 What is mapping? 1.2 What is a forest landscape? 2. Considerations in forest landscape mapping2.1 Describing spatial patterns2.2 Focus on boundaries2.3 Beyond 2D data3. Utility of forest landscape maps3.1 Map representations3.2 Morphological interpretations3.3 Map scale3.4 Error assessment and validation4. Summary
Chapter 2: Fuzzy classification of vegetation for ecosystem mapping1. Introduction2. Overview of fuzzy systems2.1 Fuzzy systems - key concepts for mapping2.2 Mapping with fuzzy classifiers3. Fuzzy approaches for identifying and utilizing uncertainty3.1 Thematic uncertainty3.2 Spatial uncertainty3.3 Simultaneous considerations of thematic and spatial uncertainty3.4 Multiple outputs - fuzzy geodatabase4. Vertical structure mapping5. A look to the future6. Summary
Chapter 3: Portraying wildfires in forest landscapes as discrete complex objects1. Introduction2. Wildfire initiation and anatomy2.1 Initiation2.2 Descriptors of footprints3. Wildfires as discrete and complex objects3.1 The outer edge of a wildfire is scale-dependent 3.2 Width of the ecotone3.3 Internal heterogeneity4. Standardized depiction of wildfires as discrete complex objects 5. The future of mapping wildfires5.1 Accuracy assessment in remote regions5.2 Landscape persistence5.3 Hierarchical data formats for capturing scale effects

Chapter 4: Airborne LiDAR applications in forest landscapes1. Introduction1.1 Defining ALS LiDAR 1.2 Introduction to the three common LiDAR platforms1.3 Intensity, point density, and multi-spectral LiDAR2. Primary measurements2.1 Surface models (DEM, DSM, DTM, CHM)2.2 Canopy height models and detection and delineation of individual trees3. Secondary measurements3.1 Regression models and allometric equations3.2 Vertical profile for a single tree3.3 Classification of vegetation types3.4 Tree genus and species classification3.5 Case study: identifying potentially hazardous trees4. The future of LiDAR
Chapter 5: Regression Tree modeling of spatial pattern and process interactions1. Spatial Pattern and Processes1.1 Describing spatial patterns1.2 Process complexity1.3 Data mining2. Methods2.1 CART models2.2 BRT2.3 RF models3. Case Study Context - Influence of beetle infestation spatial patterns on fire spatial processes3.1 Study area3.2 Spatial data4. Model evaluation4.1 CART4.2 BRTs4.3 RF models4.4 Comparing modeling approaches5. Interpreting regression tree results within the context of spatial pattern and process
Chapter 6: Mapping the abstractions of forest landscape patterns1. Introduction2. Tools for evaluating landscape patterns3. Data preparation and uncertainties within metrics 3.1 Scale and classification issues4. Mapping different aspects of a landscape pattern4.1 Composition4.2 Configuration4.3 Criteria for selecting metrics5. Applications of forest pattern mapping5.1 Improving forest management5.2 Assessment of forest habitats5.3 Mapping landscape metrics by using GIS5.4 Using landscape metrics in modeling6. Future perspectives on mapping patterns6.1 3D landscape metrics6.2 4D landscape metrics7. ConclusionsChapter 7: Towards automated forest mapping1. Introduction1.1 Definitions1.1.1 Forest 1.1.2 Remote sensing for automated mapping of woodland and forest2. Data and Pre-processing2.1 Reference data 2.2 Remote sensing systems2.3 Processing of input data sets3. Mapping woodland 3.1 A hierarchical segmentation approach for mapping woodland 3.2 Individual tree and tree crown detection 3.3 Fractional tree cover approach4. Forest mapping4.1 Moving window approach4.2 Distance criterion approach5. Lessons learned6. Future perspectives
Epilogue: Toward more efficient and effective applications of forest landscape maps1. Background2. Goals of this chapter3. Considerations in forest landscape mapping3.1. The community of map developers and users is broad3.2. Maps are model outputs 3.3. Maps are probabilistic3.4. Maps contain errors3.5. Map contents are scale-related3.6. Map applications are scale-related3.7. Mapping methods are advancing rapidly4. A brief list of best practices for using forest landscape maps5. Conclusions

Eigenschaften

Breite: 155
Gewicht: 522 g
Höhe: 235
Seiten: 326
Sprachen: Englisch
Autor: Ajith H. Perera, Tarmo K. Remmel

Bewertung

Bewertungen werden nach Überprüfung freigeschaltet.

Die mit einem * markierten Felder sind Pflichtfelder.

Ich habe die Datenschutzbestimmungen zur Kenntnis genommen.

Zuletzt angesehen

eUniverse.ch - zur Startseite wechseln © 2021 Nova Online Media Retailing GmbH