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Visualization of Visualization of Geospatial Data by Geospatial Data by Component Planes and Component Planes and U-matrix U-matrix Marcos Aurélio Santos da Silva Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro Antônio Miguel Vieira Monteiro José Simeão de Medeiros José Simeão de Medeiros

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342 urban census regions of São José dos Campos, São Paulo.

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Page 1: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Visualization of Geospatial Data Visualization of Geospatial Data by Component Planes and by Component Planes and

U-matrixU-matrixMarcos Aurélio Santos da SilvaMarcos Aurélio Santos da SilvaAntônio Miguel Vieira MonteiroAntônio Miguel Vieira Monteiro

José Simeão de MedeirosJosé Simeão de Medeiros

Page 2: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Problem: Mapping urban social Problem: Mapping urban social exclusion/inclusion in São José dos exclusion/inclusion in São José dos

Campos, SP.Campos, SP. Data

– 8 socioeconomic indexes computed from raw IBGE dataset;

Questions– How the dataset is distributed?– How each variable correlates with each other?– Is there some spatial correlation between the feature

and physical spaces.

Page 3: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

342 urban census regions of São José dos Campos, São Paulo.

Page 4: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Socioeconomic data [-1,+1]Socioeconomic data [-1,+1]

1. Familiar Income (IFH);2. Educational Development (ED);3. Educational Stimulus (ES);4. Longevity (LONG);5. Environmental Quality (EQ);6. Home Quality (PQ);7. Concentration of Family Headed by Women (CWFH);8. Concentration of Family Headed by Illiterate Women

(CIWFH);

-1: Means high exclusion level; +1: Means high inclusion level

Page 6: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Self-Organizing Maps (SOM)Self-Organizing Maps (SOM)

Page 7: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Self-Organizing Maps (SOM)Self-Organizing Maps (SOM)

Unsupervised;Iterative;Batch (codevectors are updated after each

iteraction)Gaussian neighborhood kernel function;

SOM Learning process

Page 8: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Self-Organizing Maps (SOM)Self-Organizing Maps (SOM)SOM Properties

Raw dataset(each rectangle represents

a feature vector (vi)

Learning

{v1, v2 ... }

Page 9: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Relation between SOM and Relation between SOM and Spatial MapSpatial Map

Neighborhood in the feature space Neighborhood

in the physical space

Page 10: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Visualization AlgorithmsVisualization Algorithms

Unified Matrix Distance (U-matrix)

U-matrix map the codevectors values into a 2D display.

Page 11: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Visualization AlgorithmsVisualization Algorithms

Component Planes (CP)

For each variable

Page 12: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

ResultsResults

Page 13: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Group220x15

Group1

Page 14: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Group 1

Group 2

Detected Outliers

Page 15: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

IFH ED

ES LONG EQ

PQ CIWFH CWFH

High degree of similarity

High degree of homogeinity

Page 16: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Vertical

Horizontal

Diagonal \

Diagonal /So

cial

Exc

lusi

on D

irect

ion

on S

OM

Map

Page 17: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Mapping SOM distribution into the Mapping SOM distribution into the Census MapCensus Map

Page 18: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Comparing with previous Comparing with previous statistical resultsstatistical results

Statistical clustering (IEX)Neuro-clustering (SOM)

Center-to-peripherical direction of urban social exclusion

Page 19: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

ToolsTools

CASAA (processing);SOM Toolbox Matlab (SOM’s

visualization)TerraView (census map

visualization)TerraLib (spatial data access

library)

Page 20: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

TerraView

CASAA

Page 21: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

ConclusionsConclusions

SOM worked well in the task of exploratory analysis of multivariated geospatial data;

Component Planes can help us to discover spatial distribution of the phenomena;

The size of SOM Map influences the final result learning process;

Page 22: Visualization of Geospatial Data by Component Planes and U-matrix Marcos Aurélio Santos da Silva Antônio Miguel Vieira Monteiro José Simeão de Medeiros

Marcos Aurélio Santos da Silva  Marcos Aurélio Santos da Silva  e-mail: [email protected] e-mail: [email protected]

Thanks !!