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A Computationally Efficient Approach for 2D-3D Image Registration Juri Minxha Medical Image Analysis Professor Benjamin Kimia Spring 2011 Brown University.

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Presentation on theme: "A Computationally Efficient Approach for 2D-3D Image Registration Juri Minxha Medical Image Analysis Professor Benjamin Kimia Spring 2011 Brown University."— Presentation transcript:

1 A Computationally Efficient Approach for 2D-3D Image Registration Juri Minxha Medical Image Analysis Professor Benjamin Kimia Spring 2011 Brown University

2 Problem Statement  2 Signal Sources - 3D volumetric data (CT scan, MRI) - 2D images (ex. frame from fluoroscopy video)  Project 3D data onto a 2D plane and compare it to existing 2D image. The projected image is also known as the digitally reconstructed radiograph (DRR) Brown University

3 Why do we need this? Image guided surgery Pre-operative data (CT/MRI acquisitions) Good resolution 3D data Slow Acquisition Intra-operative data (fluoroscopy images) Can be quickly acquired Poor resolution, more noise (ex. temporal blurring) Brown University

4 Typical Approach to Registration Similarity Metric Optimization 1. Similarity Metric Mutual Information, Cross-Correlation, Correlation Ratio, Cross Correlation Residual Entropy 2. Optimization, Non-gradient vs. Gradient Gauss-Newton, steepest descent, Levenberg-Larquardt, simplex method etc. The main challenge is: Minimize computation time Brown University

5 Approach Outlined in this paper 1.Similarity Measure: Sum of Conditional Variances 2.Optimization Algorithm: Gauss-Newton 1.Requires computation of gradient 2.Fast convergence Brown University

6 Similarity Metric: SoCV I0I0 RoRo R 0 =100·ln(256-I 0 )-300 1.Quantize images to 64 possible values 2.Each pixel in the image on the left corresponds to a bin in the histogram (64 x 64 bins) 3.Notice the non-linear relationship between I and R

7 Similarity Metric: SoCV What happens if I 0 is translated to the right? For each value of R, we have a range of values in I’

8 Similarity Metric: SoCV Compute the conditional expectation/mean of this distribution

9 Replace each value in R with the conditional mean Similarity Metric: SoCV

10 Optimization: Gauss-Newton Goal: Find values of 3D rigid-body transform that minimize S

11 Initial Testing (Matlab MRI data) Rotation about z –axis (25 o )

12 So far… Similarity metric: Sum of Conditional Variances Optimization Step The optimization step only converges for certain cases Optimization over 1 variable only (needs to be debugged) Testing with MRI data built into Matlab

13 Plan of Action Brown University Fix optimization over all 6 parameters [r x r y r z t x t y t z ] Test on a real data set Implement the computationally efficient approach to this algorithm from their follow up paper Test on real data set and compare computation speed to original April 28 - May 2 May 2 – May 10 May 10 - May 14

14 References A computationally efficient approach for 2D-3D image registration Haque, M.N.; Pickering, M.R.; Biswas, M.; Frater, M.R.; Scarvell, J.M.; Smith, P.N.; 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), Issue Date: Aug. 31 2010-Sept. 4 2010, On page(s): 6268 – 6271 M. Pickering, A. Muhit, J. Scarvell, and P. Smith, "A new multimodal similarity measure for fast gradient-based 2D-3D image registration," in Proc. IEEE Int. Conf. on Engineering in Medicine and Biology (EMBC), Minneapolis, USA, 2009, pp. 5821-5824. Brown University


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