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Remotely sensed images, both optical and microwave (radar), have become major sources of spatial information. As described in Chapter 3, these images are formed by recording the reflected radiance or energy from a scene. A typical digital image consists of a two-dimensional array of pixels, each rep...
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          | Published in | Scale in Spatial Information and Analysis pp. 241 - 278 | 
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| Main Authors | , , | 
| Format | Book Chapter | 
| Language | English | 
| Published | 
        United States
          CRC Press
    
        2014
     Taylor & Francis Group  | 
| Subjects | |
| Online Access | Get full text | 
| ISBN | 9781439829370 1439829373  | 
| DOI | 10.1201/b16751-15 | 
Cover
| Summary: | Remotely sensed images, both optical and microwave (radar), have become major
sources of spatial information. As described in Chapter 3, these images are formed
by recording the reflected radiance or energy from a scene. A typical digital image
consists of a two-dimensional array of pixels, each representing the average reflectance, emittance, or backscattering of the surface within the sensor’s instantaneous
field of view, as described in Chapter 3. The images are used to detect the presence
of certain phenomena, map their spatial extents, and estimate certain biophysical
variables, such as leaf-area index and surface temperature. Usually, the raw images
are processed using various operations, such as filtering, compression, enhancement,
transformation, feature extraction, thematic classification, and others, where the analyst seeks to maximize the information content in the images for certain applications
(Lee 1980; Bell 1988; Price 1994; Price 1997; O’Sullivan et al. 1998; Narayanan et al.
2002; Peng et al. 2005). The information extracted from images is usually depicted
in the form of raster or vector maps. It is important to be able to quantify amounts
of information provided through the processes of measurement, geo-processing,
and representation of spatial entities and distributions, so that we can increase the
information potential of a dataset for a particular application (Barnsley et al. 1997;
Goodchild 2003; Harrie and Stigmar 2010). | 
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| ISBN: | 9781439829370 1439829373  | 
| DOI: | 10.1201/b16751-15 |