VECTOR AND RASTER
Advantages and Disadvantages
There are
several advantages and disadvantages for using either the vector or raster data
model to store spatial data. These are summarized below.
Vector Data
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Advantages :
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- Data can be
represented at its original resolution and form without generalization.
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- Graphic
output is usually more aesthetically pleasing (traditional cartographic
representation);
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- Since most
data, e.g. hard copy maps, is in vector form no data conversion is required.
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- Accurate
geographic location of data is maintained.
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- Allows for
efficient encoding of topology, and as a result more efficient operations
that require topological information, e.g. proximity, network analysis.
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Disadvantages:
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- The location
of each vertex needs to be stored explicitly.
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- For effective
analysis, vector data must be converted into a topological structure. This is
often processing intensive and usually requires extensive data cleaning. As
well, topology is static, and any updating or editing of the vector data
requires re-building of the topology.
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- Algorithms
for manipulative and analysis functions are complex and may be processing
intensive. Often, this inherently limits the functionality for large data
sets, e.g. a large number of features.
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- Continuous
data, such as elevation data, is not effectively represented in vector form.
Usually substantial data generalization or interpolation is required for
these data layers.
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Spatial
analysis and filtering within polygons is impossible
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Raster Data
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Advantages :
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- The
geographic location of each cell is implied by its position in the cell
matrix. Accordingly, other than an origin point, e.g. bottom left corner, no
geographic coordinates are stored.
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- Due to the
nature of the data storage technique data analysis is usually easy to program
and quick to perform.
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- The inherent
nature of raster maps, e.g. one attribute maps, is ideally suited for
mathematical modeling and quantitative analysis.
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- Discrete
data, e.g. forestry stands, is accommodated equally well as continuous data,
e.g. elevation data, and facilitates the integrating of the two data types.
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- Grid-cell
systems are very compatible with raster-based output devices, e.g.
electrostatic plotters, graphic terminals.
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Disadvantages:
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- The cell size
determines the resolution at which the data is represented.;
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- It is
especially difficult to adequately represent linear features depending on the
cell resolution. Accordingly, network linkages are difficult to establish.
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- Processing of
associated attribute data may be cumbersome if large amounts of data exists.
Raster maps inherently reflect only one attribute or characteristic for an
area.
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- Since most
input data is in vector form, data must undergo vector-to-raster conversion.
Besides increased processing requirements this may introduce data integrity
concerns due to generalization and choice of inappropriate cell size.
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- Most output
maps from grid-cell systems do not conform to high-quality cartographic
needs.
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It is often
difficult to compare or rate GIS software that use different data models. Some
personal computer (PC) packages utilize vector structures for data input,
editing, and display but convert to raster structures for any analysis. Other
more comprehensive GIS offerings provide both integrated raster and vector
analysis techniques. They allow users to select the data structure appropriate
for the analysis requirements. Integrated raster and vector processing
capabilities are most desirable and provide the greatest flexibility for data
manipulation and analysis.
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