Title: Map Comparison
1Map Comparison
- Evaluation of spatial models
- 24 January 2006
2Map Comparison
- Methods
- Cell-by-cell based method
- Introducing tolerance by aggregation
- Fuzzy set approach
- Structure based comparison
- Interpretation
- Validity
- Significance
- Sensitivity
3Many reasons for map comparison
- Understanding spatial changes
- Trends
- Outliers, Hot-spots, errors
- Calibration and validation of spatial models
- Intercomparison of model runs
- Investigating consistency of cartographic methods
- Unequal resolution
- Unequal legends
- And what the cat drags in
- Vande Walle et al. 2005 Comparison of mental
maps of Brussels accorsing to French and Flemish
speaking students. - Bifurcation Seeker
4Cell-by-cell
- All cells on the map are either equal or not
Percentage Correct 79
5Separating location and quantity
- Also composition / configuration
Differences in location and in quantity 5
differences
Only differences in location 8 differences
6Kappa statistic
- Resolve a bias considering uneven distributions
more alike - Controversial amongst remote sensers (Turk 2002,
Stehman 2002) - Variations define component of Kappa related to
location and quantity (histogram). (Pontius
2000, Hagen 2002) - PA Percentage of agreement
- E(PA) Expected PA, subject to histograms
- Max Maximal PA, subject to histograms
7Contingency table
- Also confusion table/matrix and transition
table/matrix
8Per category
- Temporarily reclassify map for Kappa statistics
per category (Monserud Leemans) - Most useful when prioritizing calibration efforts
Open
Park
River
City
9The limits of cell-by-cell methods
10Aggregation based methods
- Compare at coarser scales by means of aggregation
- Costanza 1987, Pontius 2004, Remmel et al 2005
11Aggregation versus moving window
12Fuzzy Set Map Comparison
- Tolerarance for confounding similar categories
- Fuzziness of category
- Tolerance for small spatial differences
- Fuzziness of location
- Overall map similarity
- Fuzzy Kappa
13Fuzziness of categories
Original map
Categorical Fuzzy map
14Fuzziness of location
Neighbour influence set by distance decay function
Original map
Categorical Fuzzy Map
Full Fuzzy Map
15Two way comparison step 1
Original Map B
Fuzzified map A is compared to crisp (original)
map B. And vice versa Similarity(A, B)
Intersection (A, B)
Original Map A
Full Fuzzy Map A
Partial comparison
16Two way comparison step 2
Originals
Comparison
Partial comparison
17Complete process
Map A
Map B
Original
Full Fuzzy
Comparison
Categorical Fuzzy
Partial Comparison
18Fuzzy Set Map Comparison applied
Fuzzy Kappa 0.49 Fraction Correct 0.91
19Fuzzy Kappa per category
Open
Park
City
River
20Impact of differences on structure
- Contiguous areas -gt Mean patch size
- Composition -gt Diversity
21Balancing structure and overlap
22Distance weighted moving window
Moving porthole with a fish-eye perspective
23Smoothly from overlap to structure
Similarity
Landscape
Neighbourhood
Local
Halving distance
24Mean patch size
Difference
Patch size
Map
Porthole
25Shannon Diversity
Difference
Porthole
Diversity
Map
26Validation
- Kappa and Fuzzy Kappa similarity relative to
expected similarity - Purpose to remove bias
- In practice expected similarity is as a benchmark
model - Better benchmarks can be thought of
27Random Constraint Match
Open -32 City -15 River 18 Park 29
Before
After
RCM
28Other neutral models
- Landscape ecology
- RULE and others
- Do not start from initial situation
Fractal
Source McGarical 2001
29Sensitivity and multi-scale analysis
- Parameters in Fuzzy Kappa, Aggregation and Moving
window approaches express scale of the analysis - Sensivity analysis Multi-scale analysis
- Generally, as scale increases, so does similarity
30Significance
- Apply reference model in Monte Carlo approach
31That was all !