Hyperspectral Remote Sensing of Vegetation
Hyperspectral narrow-band (or imaging spectroscopy) spectral data are fast emerging as practical solutions in modeling and mapping vegetation. Recent research has demonstrated the advances in and merit of hyperspectral data in a range of applications including quantifying agricultural crops, modelin...
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Format | eBook Book |
Language | English |
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Boca Raton
CRC Press
2012
CRC Press, an imprint of Taylor & Francis CRC Press LLC |
Edition | 1 |
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Abstract | Hyperspectral narrow-band (or imaging spectroscopy) spectral data are fast emerging as practical solutions in modeling and mapping vegetation. Recent research has demonstrated the advances in and merit of hyperspectral data in a range of applications including quantifying agricultural crops, modeling forest canopy biochemical properties, detecting crop stress and disease, mapping leaf chlorophyll content as it influences crop production, identifying plants affected by contaminants such as arsenic, demonstrating sensitivity to plant nitrogen content, classifying vegetation species and type, characterizing wetlands, and mapping invasive species. The need for significant improvements in quantifying, modeling, and mapping plant chemical, physical, and water properties is more critical than ever before to reduce uncertainties in our understanding of the Earth and to better sustain it. There is also a need for a synthesis of the vast knowledge spread throughout the literature from more than 40 years of research. Hyperspectral Remote Sensing of Vegetation integrates this knowledge, guiding readers to harness the capabilities of the most recent advances in applying hyperspectral remote sensing technology to the study of terrestrial vegetation. Taking a practical approach to a complex subject, the book demonstrates the experience, utility, methods and models used in studying vegetation using hyperspectral data. Written by leading experts, including pioneers in the field, each chapter presents specific applications, reviews existing state-of-the-art knowledge, highlights the advances made, and provides guidance for the appropriate use of hyperspectral data in the study of vegetation as well as its numerous applications, such as crop yield modeling, crop and vegetation biophysical and biochemical property characterization, and crop moisture assessment. This
comprehensive book brings together the best global expertise on hyperspectral remote sensing of agriculture, crop water use, plant species detection, vegetation classification, biophysical and biochemical modeling, crop productivity and water productivity mapping, and modeling. It provides the pertinent facts, synthesizing findings so that readers can get the correct picture on issues such as the best wavebands for their practical applications, methods of analysis using whole spectra, hyperspectral vegetation indices targeted to study specific biophysical and biochemical quantities, and methods for detecting parameters such as crop moisture variability, chlorophyll content, and stress levels. A collective "knowledge bank," it guides professionals to adopt the best practices for their own work. |
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AbstractList | Hyperspectral narrow-band (or imaging spectroscopy) spectral data are fast emerging as practical solutions in modeling and mapping vegetation. Recent research has demonstrated the advances in and merit of hyperspectral data in a range of applications including quantifying agricultural crops, modeling forest canopy biochemical properties, detecting crop stress and disease, mapping leaf chlorophyll content as it influences crop production, identifying plants affected by contaminants such as arsenic, demonstrating sensitivity to plant nitrogen content, classifying vegetation species and type, characterizing wetlands, and mapping invasive species. The need for significant improvements in quantifying, modeling, and mapping plant chemical, physical, and water properties is more critical than ever before to reduce uncertainties in our understanding of the Earth and to better sustain it. There is also a need for a synthesis of the vast knowledge spread throughout the literature from more than 40 years of research. Hyperspectral Remote Sensing of Vegetation integrates this knowledge, guiding readers to harness the capabilities of the most recent advances in applying hyperspectral remote sensing technology to the study of terrestrial vegetation. Taking a practical approach to a complex subject, the book demonstrates the experience, utility, methods and models used in studying vegetation using hyperspectral data. Written by leading experts, including pioneers in the field, each chapter presents specific applications, reviews existing state-of-the-art knowledge, highlights the advances made, and provides guidance for the appropriate use of hyperspectral data in the study of vegetation as well as its numerous applications, such as crop yield modeling, crop and vegetation biophysical and biochemical property characterization, and crop moisture assessment. This
comprehensive book brings together the best global expertise on hyperspectral remote sensing of agriculture, crop water use, plant species detection, vegetation classification, biophysical and biochemical modeling, crop productivity and water productivity mapping, and modeling. It provides the pertinent facts, synthesizing findings so that readers can get the correct picture on issues such as the best wavebands for their practical applications, methods of analysis using whole spectra, hyperspectral vegetation indices targeted to study specific biophysical and biochemical quantities, and methods for detecting parameters such as crop moisture variability, chlorophyll content, and stress levels. A collective "knowledge bank," it guides professionals to adopt the best practices for their own work. |
Author | Lyon, John Grimson Thenkabail, Prasad Srinivasa Huete, Alfredo |
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Copyright | 2012 by Taylor & Francis Group, LLC |
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DOI | 10.1201/b11222 |
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Discipline | Botany |
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Editor | Thenkabail, Prasad S. Lyon, John G. |
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Keywords | Red Edge NDVI Spectral Bands Hyperspectral Image Data HS Imagery Hyperspectral Sensor Red Edge PLSR Model NPV Vegetation Water Content Spectral Indices Hyperspectral Data Red Edge Bands Hyperspectral Remote Sensing HSI Pixel Vector Vegetation Index Redundant Bands Hyperspectral Vegetation Indices SMA NDWI Lidar Data Rt Model Leaf Chlorophyll Content Rep Chlorophyll Content |
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Notes | Includes bibliographical references and index |
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Snippet | Hyperspectral narrow-band (or imaging spectroscopy) spectral data are fast emerging as practical solutions in modeling and mapping vegetation. Recent research... |
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SubjectTerms | Crops Crops -- Remote sensing Multispectral imaging Multispectral photography Plants Plants -- Remote sensing Remote sensing Vegetation monitoring |
TableOfContents | Front Cover -- Contents -- Foreword -- Preface -- Acknowledgments -- Editors -- List of Acronyms and Abbreviations -- Contributors -- Chapter 1: Advances in Hyperspectral Remote Sensing of Vegetation and Agricultural Croplands -- Chapter 2: Hyperspectral Sensor Characteristics: Airborne, Spaceborne, Hand-Held, and Truck-Mounted -- Integration of Hyperspectral Data with LIDAR -- Chapter 3: Hyperspectral Remote Sensing in Global Change Studies -- Chapter 4: Hyperspectral Data Mining -- Chapter 5: Hyperspectral Data Processing Algorithms -- Chapter 6: Nondestructive Estimation of Foliar Pigment (Chlorophylls, Carotenoids, and Anthocyanins) Contents: Evaluating a Semianalytical Three-Band Model -- Chapter 7: Forest Leaf Chlorophyll Study Using Hyperspectral Remote Sensing -- Chapter 8: Estimating Leaf Nitrogen Concentration (LNC) of Cereal Crops with Hyperspectral Data -- Chapter 9: Characterization on Pastures Using Field and Imaging Spectrometers -- Chapter 10: Optical Remote Sensing of Vegetation Water Content -- Chapter 11: Estimation of Nitrogen Content in Crops and Pastures Using Hyperspectral Vegetation Indices -- Chapter 12: Spectral Bioindicators of Photosynthetic Efficiency and Vegetation Stress -- Chapter 13: Spectral and Spatial Methods of Hyperspectral Image Analysis for Estimation of Biophysical and Biochemical Properties of Agricultural Crops -- Chapter 14: Hyperspectral Vegetation Indices -- Chapter 15: Remote Sensing Estimation of Crop Biophysical Characteristics at Various Scales -- Chapter 16: Hyperspectral Remote Sensing Tools for Quantifying Plant Litter and Invasive Species in Arid Ecosystems -- Chapter 17: Crop Type Discrimination Using Hyperspectral Data -- Chapter 18: Identification of Canopy Species in Tropical Forests Using Hyperspectral Data Chapter 19: Detecting and Mapping Invasive Plant Species by Using Hyperspectral Data -- Chapter 20: Hyperspectral Remote Sensing for Forest Management -- Chapter 21: Hyperspectral Remote Sensing of Wetland Vegetation -- Chapter 22: Characterization of Soil Properties Using Reflectance Spectroscopy -- Chapter 23: Analysis of the Effects of Heavy Metals on Vegetation Hyperspectral Reflectance Properties -- Chapter 24: Hyperspectral Narrowbands and Their Indices on Assessing Nitrogen Contents of Cotton Crop Applications -- Chapter 25: Using Hyperspectral Data in Precision Farming Applications -- Chapter 26: Hyperspectral Data in Long-Term, Cross-Sensor Continuity Studies -- Chapter 27: Hyperspectral Analysis of Rocky Surfaces on the Earth and Other Planetary Bodies -- Chapter 28: Hyperspectral Remote Sensing of Vegetation and Agricultural Crops: Knowledge Gain and Knowledge Gap After 40 Years of Research -- Back Cover |
Title | Hyperspectral Remote Sensing of Vegetation |
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