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Image Processing for Physical Data

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Presentation on theme: "Image Processing for Physical Data"— Presentation transcript:

1 Image Processing for Physical Data
Xuanxuan Su May 31, 2002

2 Outline Background System Implementation Evaluation
Physical experimental image data Pre-processing method Correlation computing System Implementation Evaluation

3 Image & Time-of-Flight Spectrometer
Time-Resolved Images 128 x 128 Pixels 730 Hz Digital Acquisition 500,000 – 1,000,000 Frames Mass-Resolved Energies & Angular Distributions Time-Resolved Waveforms Digital Scope Acquisition Mass-Resolved Energies Distributions

4 Momentum Image Momentum POLARIZATION AXIS

5 Real Space Correlation Images
Correlation Approach Real Space Correlation Images AVERAGE IMAGE CORRELATION IMAGE POLARIZATION AXIS 1 o (= Dj) Angle Sectors eV (= DE) Energy Sectors

6 Image Data For each experiment 500,000 ~ 1,000,000 frames
8G ~ 16G uncompressed data 5M ~ 150M compressed data Pixels are sparse

7 Challenge Previous work Low accuracy Computational resource is limited
Data compression Correlation of sectors Low accuracy Computational resource is limited Large data set can’t fit in memory More than 3 hours for 600 sectors correlation

8 Applied Technologies Clustering Correlation Sampling

9 Clustering Pre-processing method
Represent a cluster of points by their centroid Can be used to achieve data compression 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1

10 K-Means Clustering Algorithm Simply and fast
Randomly choose k cluster centers Assign each data to the closest cluster center Recompute the cluster centers using the current cluster member until a stop criteria is met Simply and fast Sensitive to initial seed selection

11 Incremental Clustering
Algorithm: Assign the first data item to a cluster For next data item, either assign it to one existing cluster or a new cluster Repeat step 2 until all the data items are clustered Advantage Small space requirement Non-iterative

12 Correlation Coefficients
A measure of linear association The formula

13 Sampling Calculate correlation Estimate the accuracy of approximation
Image sampling Problem: the number of samples that have a good estimation of correlation Estimate the accuracy of approximation Useful for evaluation Pixels sampling

14 System Implementation
Pre-processing Incremental clustering method Spotlize Pre-define the radius of clusters

15 System Implementation (con’t)
Progressive Correlation Computing Pyramidal grids Algorithm Compute the correlation in a low resolution, find the most correlated grids Divide the corresponding grids into smaller grids Repeat step 1 & 2 until a stop criteria is met Increase accuracy have to multi-scan data set

16 Evaluation Run time Accuracy of correlation
Spotlized images vs. original images Choose sample pixels

17 Future Work Avoid multi-scan data set
Find a number of sampling images so that the data can fit in memory and have high accuracy Investigate other association measure methods


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