Data Standards: Scale, Accuracy, Precision Flashcards

Lecture 9

1
Q

What is scale?

A
  • Scale can refer to several different concepts including grain (spatial resolution), extent (landscape size) & cartographic ratio (map scale).
  • Cartographic ratio or map scale reflects how much an object(s) is reduced from its true spatial extent (true landscape size).
  • The scale of a map reflects how accurately the location and shape of the features can be depicted on the map or in our GIS database, and how much detail can be presented
  • The ratio component of a maps scale tells us how many units of the real world are represented by a smaller unit on the map.
  • Scale: The ratio tells us how many units of the real world are represented by a smaller unit on the maps.
  • Given
  • 1:10,000 map
  • 1cm on the map
  • 10,000cm (or 100m) on the ground in the real world..
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2
Q

What is small scale?

A

❑ Small area on map
covers large area on the ground
❑ E.g. 1:1million map
1cm on map = 1,000,000cm on the ground (or 1,000m)
❑ Coarse scale

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3
Q

What is large scale?

A

❑ Same sized area covers
small area on the ground
❑ can represent more detail of what is on the ground
❑ E.g. 1:10,000 map
1cm on map = 10,000cm
on the ground (or 100m)
❑ Fine scale - more detail you capture the larger the file size.

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4
Q

What do we need to consider when calculating map scale?

A
  • Ground Distance
  • Map distance
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5
Q

What is scale ratio?

A

ground distance / map distance

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6
Q

What is the grain scale?

A

in raster data = spatial resolution of an image is the grain ratio.

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7
Q

What is spatial resolution?

A

is the size of each raster grid or pixel making up the larger raster image.
pixel size determines the details of a raster image.

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8
Q

What is accuracy?

A

Accuracy of data is the degree to which data correctly reflects the real world object OR event being described.

how true the meausruement of recorded values is to the true values.

how far the recorded values are from the true value, this calculation gives the true dataset.

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9
Q

What is error?

A

the difference between the measurement of recorded values and the true values.

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10
Q

What is accuracy in GIS?

A
  • is how close the recorded location of a spatial feature is to its ground location
  • The degree to which information on a map or in a digital database matches true (or accepted) values.
  • Accuracy is partially determined by map scale
  • Geographical positional accuracy:
  • Horizontal (x:y)
  • Vertical (z)
  • Attribute accuracy and logical consistency
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11
Q

What is precision?

A
  • Precision measures how exactly the location is recorded
  • How many decimals on your DMS GPS reading
  • Production level GPS (5m) or DGPS (< 1cm)
  • Precision is the repeatability of measurements i.e. How may times measured.
    high precision does not indicate a high accuracy!! and high accuracy does not imply high precision!!

Beware:
Precisely measured data can still be inaccurate
If you are standing at the wrong spot with your DGPS

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12
Q

What level of precision and accuracy does your project require?

A
  • High precision and accuracy for engineering projects such as road and utility construction (engineers mapping pipelines). They require very precise information measured to the millimeter
  • A Demographic analyses of electoral trends could probably make do with slightly lower levels of attribute accuracy.
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13
Q

Errors with accuracy and precision.

A
  • Data quality: refers to the relative accuracy and precision of a particular GIS database. These facts are often documented in data quality reports.
  • Error involves both the imprecision of data and its inaccuracies.
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14
Q

What are common error types?

A
  1. Positional accuracy and precision: horizontal & vertical location
  2. Attribute accuracy (correct) and precision (enough detail info)
  3. Conceptual accuracy and precision: the user determines classes and categories
  4. Logical accuracy and precision: data must be used correctly…GIS systems are typically unable to warn the user if data are being used incorrectly.
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15
Q

Examples of other errors.

A
  1. Age of data ..too old?
  2. Areal Cover ..Incomplete, like RS in cloudy areas
  3. Map Scale … match the appropriate scale to the level of detail required in the project
  4. Density of Observations
    too small test sample
  5. Relevance …wrong data/surrogate data
  6. Format - Conversion of scale, projection, changing from raster to vector format, and resolution size of pixels.
    - Cost often require data reformation to the “lowest common denominator” for
    transmission and use by multiple GIS
  7. Accessibility - Restricted, classified data
  8. Cost - SPOT VS Landsat
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16
Q

What is positional accuracy?

A
  • Variance of map features vs true position
  • Depends on type of data, i.e. Discrete vs Continuous (often more difficult to map)
17
Q

Accuracy of content

A
  • Complete? Correctly labelled?
  • Attribute errors because of human error or faulty instrument calibration used to measure specific features such as altitude, soil or pH.
18
Q

Sources of variation in data

A
  • Natural variation in data being collected ….. salinity in bays and estuaries dependent upon freshwater influx and evaporation
19
Q

Numerical errors

A

computer proccessing errors.

20
Q

Errors in overlay analysis

A

overlaying multiple layer of maps can result in problems such as Slivers, Overshoot, and Dangles.

21
Q

Classification and generalisation Problems

A
  • For the human mind to comprehend vast amounts of data it must be classified, and in some cases generalized, to be understandable.
22
Q

Digitalising and geocoding Errors

A

Operator errors, and damaged source maps.

23
Q

What is error propagation?

A

occurs when one error leads to another i.e. error build up.

check metadata for error propagation.

24
Q

What is cascading?

A

means that erroneous, imprecise, and inaccurate information will skew a GIS solution.