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Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst
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Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Dec 20, 2015

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Page 1: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Contrast Enhancement

Crystal Logan

Mentored by: Dr. Lucia DettoriDr. Jacob Furst

Page 2: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Project Objective

Assist Radiologist in reading images

Enhance the Contrast of Images

Page 3: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

“The Big Picture”Explore Contrast Enhancement techniques Linear binning equally divides ranges of

grey levels into binsHistogram Equalization enhances images by

plotting frequency Automatically enhance multiple regions of the

image.

Page 4: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Previous work on Multiple Windows

User selects the number of windows (1-3) on which to apply contrast enhancement

User specifies the grey level ranges for each window to be used

User selects the Contrast Enhancement algorithm to be used

The selected algorithm is applied to the regions

Original image, and the enhance image are displayed

Page 5: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Example of Windows

Page 6: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Example of Windows

Page 7: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Example of Windows

Page 8: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Research Objective

Enhance the Contrast of ImagesExplore Contrast Enhancement techniques Automatically enhance multiple regions of the

image

Page 9: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Expectation Maximization

EM algorithm identifies four Gaussian to be used to partition the histogram of the image in four regions

Parameters: means and standard deviations of the Gaussian curves

The parameters are estimated by likelihood functions

Iterative Process

Page 10: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Expectation Maximization

First Iteration Second Iteration

Copyright © 2001, Andrew W. Moore

Page 11: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Expectation Maximization

Third Iteration fourth Iteration

Copyright © 2001, Andrew W. Moore

Page 12: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Expectation Maximization

fifth Iteration Sixth Iteration

Copyright © 2001, Andrew W. Moore

Page 13: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Expectation Maximization

Copyright © 2001, Andrew W. Moore

Twentieth Iteration

Page 14: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Expectation Maximization Expectation Step:

Sets initial value for the parameter by using kmeans cluster.

Maximization Step:Uses the data from the expectation step to

estimate the parameter, by taking the derivative. Repeat iteration until there is Convergence.

Page 15: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

K-means Cluster statistical algorithm k the number of clusters (4 in our case) Find the centroids for the clusters Calculates distance of all elements from

the centroids Group elements from the centroids.

Page 16: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

EM Results

Regions Air Water Tissue Bone

0.12 0.39 0.46 0.018

location 799 1019.5 104.7 1234.1

Expectation Maximization

Page 17: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

EM Image Histogram & Gaussian:

Page 18: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

EM image Histogram & Gaussian

Page 19: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Analysis Graphs

The Gaussian graph are accurately estimating the centroids.

Identification Algorithm gives us a estimate of how much materials are in each region

based on the maximization step.

Iterations Manipulating the iterations in both the K mean and EM algorithm,

resulted in k-mean iterations isn’t crucial, and EM iterations did change one of the Gaussian curves’ amplitude

Page 20: Contrast Enhancement Crystal Logan Mentored by: Dr. Lucia Dettori Dr. Jacob Furst.

Future Works Explore CE techniques and put them into

windows by the using the EM Measure the Contrast in the image using

Greedy Algorithms