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Semantics of Quality and Bias in NASA Remote Sensing Data

This paper discusses the representation of quality and bias in NASA atmospheric remote sensing data, with a focus on information discovery and retrieval tools. It explores the challenges faced by users in accessing and understanding data, and proposes a solution using the Giovanni Earth Science Data Visualization & Analysis Tool.

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Semantics of Quality and Bias in NASA Remote Sensing Data

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  1. The Semantics of Quality and Bias Representations of NASA Atmospheric Remote Sensing Data and Information Products ON THE WEB Peter Fox, and … Gregory Leptoukh2, Stephan Zednik1, Chris Lynnes2 Tetherless World Constellation, Rensselaer Polytechnic Inst. NASA Goddard Space Flight Center, Greenbelt, MD, United States

  2. Reading • Audit/ Workflow • Information Discovery • Information discovery graph(IDG) • Projects using information discovery • Information discovery and Library Sciences • Information Discovery and retrieval tools • Social Search • Metadata • http://en.wikipedia.org/wiki/Metadata • http://www.niso.org/publications/press/UnderstandingMetadata.pdf • http://dublincore.org/

  3. Acronyms AOD Aerosol Optical Depth MDSA Multi-sensor Data Synergy Advisor MISR Multi-angle Imaging Spectro-Radiometer MODIS Moderate Resolution Imaging Spectro-radiometer OWL Web Ontology Language PML Proof Markup Language REST Representational State Transfer UTC Coordinated Universal Time XML eXtensible Markup Language XSL eXtensibleStylesheet Language XSLT XSL Transformation

  4. Where are we in respect to the data challenge? “The user cannot find the data; If he can find it, cannot access it; If he can access it, ; he doesn't know how good they are; if he finds them good, he can not merge them with other data” The Users View of IT, NAS 1989

  5. Giovanni Earth Science Data Visualization & Analysis Tool • Developed and hosted by NASA/ Goddard Space Flight Center (GSFC) • Multi-sensor and model data analysis and visualization online tool • Supports dozens of visualization types • Generate dataset comparisons • ~1500 Parameters • Used by modelers, researchers, policy makers, students, teachers, etc.

  6. Giovanni Allows Scientists to Concentrate on the Science Exploration Initial Analysis Use the best data for the final analysis Derive conclusions Write the paper Submit the paper The Old Way: The Giovanni Way: Web-based Services: Jan Pre-Science Find data Minutes Retrieve high volume data Read Data Feb Extract Parameter Learn formats and develop readers Days for exploration Filter Quality Mirador Extractparameters Mar Use the best data for the final analysis Subset Spatially Giovanni Perform spatial and other subsetting DO SCIENCE Derive conclusions Reformat Apr Identify quality and other flags and constraints Write the paper Reproject Submit the paper Perform filtering/masking Visualize May Develop analysis and visualization Explore Accept/discard/get more data (sat, model, ground-based) Analyze Jun Web-based tools like Giovanni allow scientists to compress the time needed for pre-science preliminary tasks: data discovery, access, manipulation, visualization, and basic statistical analysis. Jul DO SCIENCE Aug Sep Scientists have more time to do science! Oct

  7. Data Usage Workflow

  8. Data Usage Workflow *Giovanni helps streamline / automate Subset / Constrain Reformat Filtering Re-project Integration

  9. Data Usage Workflow Precision Requirements Integration Planning Quality Assessment Requirements *Giovanni helps streamline / automate Intended Use Subset / Constrain Reformat Filtering Re-project Integration

  10. Challenge • Giovanni streamlines data processing, performing required actions on behalf of the user • but automation amplifies the potential for users to generate and use results they do not fully understand • The assessment stage is integral for the user to understand fitness-for-use of the result • but Giovanni did not assist in assessment • We were challenged to instrument the system to help users understand results

  11. Producers Consumers Quality Control Quality Assessment Fitness for Purpose Fitness for Use Trustor Trustee 11

  12. Definitions – for an atmospheric scientist • Quality • Is in the eyes of the beholder – worst case scenario… or a good challenge • Uncertainty • has aspects of accuracy (how accurately the real world situation is assessed, it also includes bias) and precision (down to how many digits)

  13. Quality Control vs. Quality Assessment Quality Control (QC) flags in the data (assigned by the algorithm) reflect “happiness” of the retrieval algorithm, e.g., all the necessary channels indeed had data, not too many clouds, the algorithm has converged to a solution, etc. Quality assessment is done by analyzing the data “after the fact” through validation, intercomparison with other measurements, self-consistency, etc. It is presented as bias and uncertainty. It is rather inconsistent and can be found in papers, validation reports all over the place.

  14. Definitions – for an atmospheric scientist • Bias has two aspects: • Systematic error resulting in the distortion of measurement data caused by prejudice or faulty measurement technique • A vested interest, or strongly held paradigm or condition that may skew the results of sampling, measuring, or reporting the findings of a quality assessment: • Psychological: for example, when data providers audit their own data, they usually have a bias to overstate its quality. • Sampling: Sampling procedures that result in a sample that is not truly representative of the population sampled. (Larry English)

  15. Data quality needs: fitness for use • Measuring Climate Change: • Model validation: gridded contiguous data with uncertainties • Long-term time series: bias assessment is the must , especially sensor degradation, orbit and spatial sampling change • Studying phenomena using multi-sensor data: • Cross-sensor bias is needed • Realizing Societal Benefits through Applications: • Near-Real Time for transport/event monitoring - in some cases, coverage and timeliness might be more important that accuracy • Pollution monitoring (e.g., air quality exceedance levels) – accuracy • Educational (users generally not well-versed in the intricacies of quality; just taking all the data as usable can impair educational lessons) – only the best products

  16. Level 2 data

  17. Level 2 data • Swathfor MISR, orbit 192 (2001)

  18. Level 3 data

  19. Problem statement Data quality is an ill-posed problems because It is not uniquely defined It is user dependent It is difficult to be quantified It is handled differently by different teams It is perceived differently by data providers and data users User question: Which data or product is better for me?

  20. Quality concerns are poorly addressed Data quality issues have lower priority than building an instrument, launching rockets, collecting/processing data, and publishing papers using the data. Little attention on how validation measurements are passed from Level 1 to Level 2 and higher as it propagates in time and space.

  21. Users perspective There might be a better product somewhere but if I cannot easily find it and understand it, I am going to use whatever I have and know already.

  22. (Some) Facets of Quality • Accuracy: closeness to Truth • Bias: systematic deviation • Uncertainty: non-systematic deviation • Completeness: how well data cover a domain • Spatial • Temporal • Consistency • Spatial: absence of spurious spatial artifacts • Temporal: absence of trend, spike and offset artifacts • Resolution • Temporal: time between successive measurements of the same volume • Spatial: distance between adjacent measurements • Ease of Use • Latency: Time between data collection and receipt

  23. Pretend you’re a museum curator... ...and you’re putting together an exhibit on wildfires with some cool satellite data Which data quality facet is most important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use Museum Curator

  24. Museum Curator Poll Which data quality facet is most important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  25. You’re an operational user and... ...you want to use satellite wildfire data to direct HotShot team deployments Which data quality facet is most important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  26. Operational User / HotShot Which data quality facet is most important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  27. You’re an operational user and... ...you want to use satellite wildfire data to estimate burn scar areas for landslide prediction Which data quality facet is most important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  28. Operational User / Landslide Which data quality facet is most important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  29. You’re an ecology researcher and... ...you want to use satellite wildfire data to predict extinction risk of threatened species Which data quality facet is least important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  30. Ecology Researcher Which data quality facet is least important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  31. You’re a remote sensing researcher... ...you want to perfect an algorithm to detect and estimate active burning areas at night with visible and infrared radiances Which data quality facet is least important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  32. Remote Sensing Researcher... Which data quality facet is least important to you? A – Accuracy B – Resolution (spatial and/or temporal) C – Completeness (spatial and/or temporal) D – Latency E – Ease of Use

  33. Information retrieval • A vast field (metrics with theory behind them) • Precision (very relevant to this class) - is the fraction of the items retrieved that are relevant to the user's information need. • Recall - is the fraction of the items that are relevant to the query that are successfully retrieved. • Fall-out – is the proportion of non-relevant documents that are retrieved, out of all non-relevant documents available, e.g. 0 fall-out if you return 0 items! • F-measure – is the weighted harmonic mean of precision and recall

  34. Models of IR

  35. Machine Learning • Daniel Wilkerson: “The precise study of how to make decisions with only incomplete information is deep”. • Part of information systems design (and architecture and implementation underneath) is to ensure people make the best and most robust decisions in the face of uncertainty.

  36. Same parameter Same space & time MODIS vs. MERIS MODIS MERIS Different results – why? A threshold used in MERIS processing effectively excludes high aerosol values. Note: MERIS was designed primarily as an ocean-color instrument, so aerosols are “obstacles” not signal.

  37. Spatial and temporal sampling – how to quantify to make it useful for modelers? • MODIS Aqua AOD July 2009 • MISR Terra AOD July 2009 • Completeness: MODIS dark target algorithm does not work for deserts • Representativeness: monthly aggregation is not enough for MISR and even MODIS • Spatial sampling patterns are different for MODIS Aqua and MISR Terra: “pulsating” areas over ocean are oriented differently due to different orbital direction during day-time measurement  Cognitive bias

  38. Three projects with data quality/ bias perspective • Multi-sensor Data Synergy Advisor • Product-level Quality: how closely the data represent the actual geophysical state • Data Quality Screening Service • Pixel-level Quality: algorithmic guess at usability of data point • Granule-level Quality: statistical roll-up of Pixel-level Quality • Aerosol Statistics • Record-level Quality: how consistent and reliable the data record is across generations of measurements

  39. Multi-Sensor Data Synergy Advisor (MDSA) • Goal: Provide science users with clear, cogent information on salient differences between data candidates for fusion, merging and intercomparison • Enable scientifically and statistically valid conclusions • Develop MDSA on current missions: • NASA - Terra, Aqua, (maybe Aura) • Define implications for future missions

  40. How MDSA worked MDSA is a service designed to characterize the differences between two datasets and advise a user (human or machine) on the advisability of combining them. • Provides the Giovanni online analysis tool • Describes parameter and products • Documents steps leading to the final data product • Enables better interpretation and utilization of parameter difference and correlation visualizations. • Provides clear and cogent information on salient differences between data candidates for intercomparison and fusion. • Provides information on data quality • Provides advice on available options for further data processing and analysis.

  41. Correlation – same instrument, different satellites Anomaly MODIS Level 3 dataday definition leads to artifact in correlation

  42. …is caused by an Overpass Time Difference

  43. Effect of the Data Day definition on Ocean Color data correlation with Aerosol data Only half of the Data Day artifact is present because the Ocean Group uses the better Data Day definition! Correlation between MODIS Aqua AOD (Ocean group product) and MODIS-Aqua AOD (Atmosphere group product) Pixel Count distribution

  44. Research approach • Systematizing quality aspects • Working through literature • Identifying aspects of quality and their dependence of measurement and environmental conditions • Developing Data Quality ontologies • Understanding and collecting internal and external provenance • Developing rulesets allows to infer pieces of knowledge to extract and assemble • Presenting the data quality knowledge with good visual, statement and references

  45. Webs of data • Early Web - Web of pages • http://www.ted.com/index.php/talks/tim_berners_lee_on_the_next_web.html • Semantic web started as a way to facilitate “machine accessible content” • Initially was available only to those with familiarity with the languages and tools, e.g. your parents could not use it • Webs of data grew out of this • One specific example is W3C’s Linked Open Data

  46. Semantic Web • http://www.w3.org/2001/sw/ • “The Semantic Web provides a common framework that allows data to be shared and reused across application, enterprise, and community boundaries. It is a collaborative effort led by W3C with participation from a large number of researchers and industrial partners. It is based on the Resource Description Framework (RDF). See also the separate FAQ for further information.”

  47. Linked open data • http://linkeddata.org/guides-and-tutorials • http://tomheath.com/slides/2009-02-austin-linkeddata-tutorial.pdf • And of course: • http://logd.tw.rpi.edu/

  48. 2009-03-05 (Chris Bizer)

  49. September 2011 “Linking Open Data cloud diagram, by Richard Cyganiak and Anja Jentzsch. http://lod-cloud.net/”

  50. Deep web • Data behind web services • Data behind query interfaces (databases or files)

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