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Quakefinder : A Scalable Data Mining System for detecting Earthquakes from Space A paper by Paul Stolorz and Christopher Dean Presented by, Naresh Baliga
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Presentation Flow Introduction to Quakefinder Quakefinder’s Inference Engine Imageodesy Algorithm Quakefinder Architecture Implementation Details Results for Lander’s Earthquake Advantages and Disadvantages Conclusions and Future Directions References
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What does Quakefinder do? Analyzes the earth’s crustal dynamics Enables automatic detection and measurement of earthquake faults from satellite imagery
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Problems that Quakefinder addresses: Design of a statistical inference engine that can reliably infer the fundamental processes to acceptable precision Development and Implementation of scalable algorithms for massive datasets A system that performs that performs all the computations involved automatically and presents scientists with useful scientific products
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Inference Engine Purpose: To detect small systematic differences between a pair of images Concept used: Imageodesy, developed by Crippen and Blom
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Imageodesy Algorithm 1.Break the before image and after image into many non-overlapping templates of size, say 100 * 100 pixels 2.Measure correlation between the before template and after template 3.Determine the best template offset from the maximum correlation value from above 4.Repeat 2 and 3 at successively higher resolution using bilinear interpolation to generate new templates offset by half a pixel in each direction
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Inferring displacement maps between image pairs
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Quakefinder Architecture
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Adaptive Learning The E-step evaluates a probability distribution for the data given the model parameters from the previous iteration The M step then finds the new parameter set that maximizes the probability distribution E-step: Redefine the sizes and shapes of those templates that overlap the estimated fault. M-step: Recompute the displacement map with updated template parameters
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Implementation Details Quakefinder is implemented on a 256-node Cray T3D at JPL Each of the 256 computing nodes are based on a DEC Alpha processor running at 150MHz The nodes are arranged as a 3-dimensional tori, allowing each node to communicate with up to 6 nodes
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Satellite Image input for Quakefinder
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Results for the Lander’s Earthquake
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Advantages Quakefinder is one of the first kind of data mining systems to be applied to temporal events in nature Fulfilled the necessity of area-mapped information about 2D tectonic processes Can be used as a component in other data mining systems. E.g. SKICAT Disadvantages Is not completely automated, still requires a geologist to determine whether results are accurate enough Geometric corrections are assumed to be negligible
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Future Directions Being applied to detect subtle motions on Europa Can be applied to monitoring global climate changes and natural hazard monitoring Can be applied to detect sand-dune activities on Mars
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References mishkin.jpl.nasa.gov/spacemicro/SCALABLE_PAPER www-aig.jpl.nasa.gov/public/mls/quakefinder/ www.cacr.caltech.edu/Publications/annreps/annrep97/space.html www-aig.jpl.nasa.gov/public/mls/news/sf_examiner_article.html
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Tidbits Early Warning Systems for detecting Earthquakes www-ep.es.llnl.gov/www-ep/ghp/signal-process/web_p1.html Earthquake Prediction: Science on shaky ground? www.the-scientist.library.upenn.edu/yr1992/july/research_920706.html
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