Generating a satisfactory classification image from remote
sensing data is not a straightforward task. Many factors contribute
to this difficulty including the characteristics of a study area,
availability of suitable remote sensing data, ancillary and ground
reference data, proper use of variables and classification
algorithms, and the analyst's experience. An authoritative text,
Advances in Environmental Remote Sensing: Sensors, Algorithms, and
Applications compiles comprehensive review articles to examine the
developments in concepts, methods, techniques, and applications as
well as focused articles and case studies on the latest on a
particular topic.
Divided into four sections, the first deals with various
sensors, systems, or sensing operations using different regions of
wavelengths. Drawing on the data and lessons learned from the U.S.
Landsat remote sensing programs, it reviews key concepts, methods,
and practical uses of particular sensors/sensing systems. Section
II presents new developments in algorithms and techniques,
specifically in image preprocessing, thematic information
extraction, and digital change detection. It gives correction
algorithms for hyperspectral, thermal, and multispectral sensors,
discusses the combined method for performing topographic and
atmospheric corrections, and provides examples of correcting
non-standard atmospheric conditions, including haze, cirrus, and
cloud shadow.
Section III focuses on remote sensing of vegetation and related
features of the Earth's surface. It reviews advancements in the
remote sensing of ecosystem structure, process, and function, and
notes important trade-offs and compromises in characterizing
ecosystems from space related to spatial, spectral, and temporal
resolutions of the imaging sensors. It discusses the mismatch
between leaf-level and species-level ecological variables and
satellite spatial resolutions and the resulting difficulties in
validating satellite-derived products.
Finally, Section IV examines developments in the remote sensing
of air, water, and other terrestrial features, reviews MODIS
algorithms for aerosol retrieval at both global and local scales,
and demonstrates the retrieval of aerosol optical thickness (AOT).
This section rounds out coverage with a look at remote sensing
approaches to measure the urban environment and examines the most
important concepts and recent research.
General
Is the information for this product incomplete, wrong or inappropriate?
Let us know about it.
Does this product have an incorrect or missing image?
Send us a new image.
Is this product missing categories?
Add more categories.
Review This Product
No reviews yet - be the first to create one!