Data Sources Sources, integration, quality, error, uncertainty.

Slides:



Advertisements
Similar presentations
REQUIRING A SPATIAL REFERENCE THE: NEED FOR RECTIFICATION.
Advertisements

Copyright, © Qiming Zhou GEOG1150. Cartography Data Models for Computer Cartography.
Copyright, © Qiming Zhou GEOG1150. Cartography Sources of Data.
Topographic mapping in Fiji: Challenges and opportunities Conway Pene 2012 Pacific GIS&RS Conference November 2012, Suva.
WFM 6202: Remote Sensing and GIS in Water Management © Dr. Akm Saiful IslamDr. Akm Saiful Islam WFM 6202: Remote Sensing and GIS in Water Management Akm.
Leila Talebi, Anika Kuczynski, Andrew Graettinger, and Robert Pitt
Radiometric and Geometric Errors
Digital Elevation Models GLY 560: GIS and Remote Sensing for Earth Scientists Class Home Page:
1 CPSC 695 Data Quality Issues M. L. Gavrilova. 2 Decisions…
Vector-Based GIS Data Processing Chapter 6. Vector Data Model Feature Classes points lines polygons Layers limited to one class of data Figure p. 186.
Introduction to Cartography GEOG 2016 E
NR 322: Editing Spatial Data Jim Graham Fall 2008 Chapter 6.
West Hills College Farm of the Future. West Hills College Farm of the Future Where are you NOW?! Precision Agriculture – Lesson 3.
Geographic Information Systems and Science SECOND EDITION Paul A. Longley, Michael F. Goodchild, David J. Maguire, David W. Rhind © 2005 John Wiley and.
GIS Overview. What is GIS? GIS is an information system that allows for capture, storage, retrieval, analysis and display of spatial data.
June 15, 2015June 15, 2015June 15, THE COURSE Mapping and Surveying Geographical Information Systems Importance of Data Global Positioning Systems.
GIS 200 Introduction to GIS Buildings. Poly Streams, Line Wells, Point Roads, Line Zoning,Poly MAP SHEETS.
Fundamentals of GIS Materials by Austin Troy © 2008 Lecture 18: Data Input: Geocoding and Digitizing By Austin Troy University of Vermont NR 143.
Data Input How do I transfer the paper map data and attribute data to a format that is usable by the GIS software? Data input involves both locational.
GIS Tutorial 1 Lecture 6 Digitizing.
Digitizing There are three primary methods for digitizing spatial information: Manual Methods include: Tablet Digitizing Heads-up Digitizing An Automated.
Spatial Data: Elements, Levels and Types. Spatial Data: What GIS Uses Bigfoot Sightings: Spatial Data.
9. GIS Data Collection.
Data Acquisition Lecture 8. Data Sources  Data Transfer  Getting data from the internet and importing  Data Collection  One of the most expensive.
Aerial photography and satellite imagery as data input GEOG 4103, Feb 20th Adina Racoviteanu.
REMOTE SENSING and AERIAL PHOTOGRAPHY Roger Wheate NREM100 Fall 2010.
Data Quality Data quality Related terms:
Spatial data Visualization spatial data Ruslan Bobov
Intro. To GIS Lecture 4 Data: data storage, creation & editing
EG1106: GI: a primer Field & Survey data collection 19 th November 2004.
Accuracy Assessment. 2 Because it is not practical to test every pixel in the classification image, a representative sample of reference points in the.
An Object-oriented Classification Approach for Analyzing and Characterizing Urban Landscape at the Parcel Level Weiqi Zhou, Austin Troy& Morgan Grove University.
Data source for Google earth
Data Quality Issues-Chapter 10
GSP 270 Digitizing with an Introduction to Uncertainty and Metadata
Ref: Geographic Information System and Science, By Hoeung Rathsokha, MSCIM GIS and Remote Sensing WHAT.
Data Sources Sources, integration, quality, error, uncertainty.
Support the spread of “good practice” in generating, managing, analysing and communicating spatial information Making scale maps using existing base maps.
Geo-referenced Information Processing System. ISPRS Geoprocessing Technologies to collect and treat spatial information for a specific goal. Geoprocessing.
Spatial Data Integration Deana D. Pennington, PhD University of New Mexico.
Using spectral data to discriminate land cover types.
GIS data sources Data capture and compilation is very time consuming and costly Up to 80% cost of a GIS (Longley et al.) Primary Data – data captured specifically.
GIS Data Quality.
Land Cover Classification Defining the pieces that make up the puzzle.
Mapping “what?” Instead of “where?”. Two types of geographic data: Horizontal location Vertical location Vegetation types Soil types Land cover Number.
Orthorectification using
GIS Data Structure: an Introduction
Data input 1: - Online data sources -Map scanning and digitizing GIS 4103 Spring 06 Adina Racoviteanu.
Remotely Sensed Data EMP 580 Fall 2015 Dr. Jim Graham Materials from Sara Hanna.
Stages in data collection projects. (Source: John Jensen) Spatial and temporal characteristics of commonly used Earth observation remote-sensing systems.
How do we represent the world in a GIS database?
Support the spread of “good practice” in generating, managing, analysing and communicating spatial information Introduction to GIS for the Purpose of Practising.
West Hills College Farm of the Future The Precision-Farming Guide for Agriculturalists Chapter Five Remote Sensing.
Chapter 4. Remote Sensing Information Process. n Remote sensing can provide fundamental biophysical information, including x,y location, z elevation or.
OUTLINE:  geocoding  digitizing terms and methods  scanning methods  adding attributes OUTLINE:  geocoding  digitizing terms and methods  scanning.
Geographic Information Systems in Water Science Unit 4: Module 16, Lecture 3 – Fundamental GIS data types.
Satellite Imagery and Remote Sensing DeeDee Whitaker SW Guilford High EES & Chemistry
Raster data models Rasters can be different types of tesselations SquaresTrianglesHexagons Regular tesselations.
Accuracy of Land Cover Products Why is it important and what does it all mean Note: The figures and tables in this presentation were derived from work.
GIS Data Structures How do we represent the world in a GIS database?
Final Review Final will cover all lectures, book, and class assignments. New lectures since last test are 18 – 26, summarized here. Over half the test.
BOT / GEOG / GEOL 4111 / Field data collection Visiting and characterizing representative sites Used for classification (training data), information.
Vector Data Input Chapter 4. Data Buy or make - sources Base map - layers Standards – accuracy Metadata As bad as the worst component.
Distance measure Point A: UTM Eastings = 450,000m; Northings = 4,500,000m Point B: UTM Eastings = 550,000m; Northings = 4,500,000m.
OSNI ® MAPPING PRODUCTS FROM LAND & PROPERTY SERVICES (LPS)
Integrated spatial data LIDAR Mapping for Coastal Monitoring Dr Alison Matthews Geomatics Manager Environment Agency Geomatics Group.
26. Classification Accuracy Assessment
Data Quality Data quality Related terms:
Image Information Extraction
Landsat (same day) data viewer
Presentation transcript:

Data Sources Sources, integration, quality, error, uncertainty

Data acquisition Land surveying (geodesy), GPS Aerial photography Satellite images Laser altimetry Digitizing of paper maps Scanning of paper maps Statistical data (e.g. from census bureaus) Surface and soil measurements

Land measurement, GPS Measuring devices: theodolites, distance measurers, range finders, GPS (for angles, distances and location) Reference systems: –RD-net (Rijksdriehoeksmeting) –GPS-kernnet (415 points) Field sketches Important for attributes (street names, which crops exactly, etc.) and for verification GPS: precision of up to a few centimeters –Based on 24 satellites –3D coordinates

Aerial photography Most important source for the Topographic Survey (TDN) Aerial photos are digitized by hand, and interpreted by the eye Precision (resolution) of ~15 cm

digital air photo, 15 cm resolution

Satellite images Measured electromagnetic radiation (reflection) Of types of surface coverage the reflected wave lengths are known approximately (for instance, vegetation reflects much infra-red) Also called: remote sensing Resolution Landsat: 30x30 m; SPOT 20x20 m or 10x10 monochromatic EROS pan: 1.8 m, IKONOS: 0.82 m, QuickBird: 0.60 m Spatial, temporal, spectral resolution

Landsat Thematic Mapper, 30 m resolution, Cape Breton Island

IKONOS, 82 cm (Singapore)

QuickBird, 60 cm

Laser altimetry (LIDAR data) For elevation data, gives 3D point cloud Precision ~20cm Correction is needed

Correction of laser altimetry data Filtering elevation data to remove towns

Digitizing of paper maps

Paper maps are the most important source for digital data Redraw bounding lines, add attributes With digitizer tablet or table, or heads-up digitising Line mode or stream mode After digitizing the topology must be added

Scanning of paper maps Convert a map by a scanner into a pixel image Automatic interpretation difficult and error- prone  checking and correction necessary Vector scanning exists too

Statistical data E.g. questionnaires and interviews Human-geographic of economic-geographic: number of dogs per 1000 households, income, political preference Usually collected by the CBS, Census Bureau, or by marketing bureaus Usually mapped as a choropleth map (administrative regions with shades-of-a- color-coded meaning, classified)

Soil measurements For non-visible data like pollution, temperature, soil type Choose sampling strategy –Ideal: random sampling –Practice: sampling in easily accessible areas –Additional samples in ‘interesting’ areas

Data source for applications Buy existing data files, provided they are available and the quality is sufficient Services to keep information up-to-date, e.g. maintain roads and road blocks in vehicle navigation systems

Data integration Convert data from two different sources in order to compare, and make analysis possible Same date of sources desirable Same level of aggregation desirable (highest level determines the level of comparison)

Integration of not aggregated and aggregated data

Edge matching Integration of digitized data sets based on adjacent map sheets Idea: create seamless digital data set

Data quality, I Precision: number of known decimals, depending on measuring device Accuracy: absense of systematic bias (No faulty fine- tuning) precise accurate both neither

Data quality, II Validitity: degree in which data is relevant for an application (complex geographic variables) E.g.: income for well-being; temperature for good weather Reliability: up-to-date, not old for purpose E.g.: data of last week is out-of-date for temperature, but not for land cover

Geometric and topological quality Absence of error Presence of consistenty

Sources of geometrical and topological errors Digitizing Integration Generalization Raster-vector conversion Edge-matching

Mismatch of boundaries of different themes

Digitizing errors

Other sources and problems Wrong attachment of geometry and attributes Missing attribute data Uncertainty at classification of satellite images Clouds in satellite images, shadows in aerial photos Unknown quality (e.g. precision) of paper maps used for digitizing: missing metadata Deforming of paper maps

Dealing with error/uncertainty Provide metadata (when data collected, how, what equipment) Visualize uncertainty E.g. classification of satellite images for land cover grass: 0.86 forest: 0.08 water: 0.03 … grass: 0.34 forest: 0.31 water: 0.25 … Confusion: 1 - (p max - p second )