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A Region of Interest Approach For Medical Image Compression Salih Burak Gokturk Stanford University.

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Presentation on theme: "A Region of Interest Approach For Medical Image Compression Salih Burak Gokturk Stanford University."— Presentation transcript:

1 A Region of Interest Approach For Medical Image Compression Salih Burak Gokturk Stanford University

2 OVERVIEW Motivation Previous Work Comparison Study of Compression Schemes ROI based System Design Conclusion

3 Motivation Medical images are huge.(300x512x512x2) High quality imaging is required in diagnostically important regions. ROI based approach is the only solution: –Lossless compression in ROI. –Very lossy compression in non-ROI.

4 OVERVIEW Motivation Previous Work Comparison Study of Compression Schemes ROI based System Design Conclusion

5 Previous Work Lossless Compression Schemes (Takaya95, Assche00) DCT based Compression Schemes (Vlaciu95) PCA based Compression(Tao96) Wavelet Transformation(2D and 3D) (Baskurt93) ROI based coding (Cosman 94,95)

6 OVERVIEW Motivation Previous Work Comparison Study of Compression Schemes ROI based System Design Conclusion

7 Lossless Compression Entropy of images – 7.93bpp Predictive Coding – 5.9bpp Entropy of difference images – 5.76bpp

8 DCT Compression (1)

9 DCT Compression (2)

10 DCT Compression (3) Quantization Step Size12481632641282565121024 MSE in dB-11.7-5.70.346.2611.917.121.825.729.332.635.9 Rate (without RLC) (bpp) 5.744.974.093.202.341.570.960.550.310.160.09 Rate (with RLC) (bpp) 8.047.095.874.513.151.951.070.550.280.140.07

11 PCA Compression - Treat each image block as a vector MSE ~ 30 dB Rate ~ 0.54 bpp

12 Blockwise Vector Quantization(1) - A simpler decoder is required

13 Blockwise Vector Quantization(2) MSE ~ 38 dB MSE ~ 39 dB

14 Motion Compensated Hybrid Coding (1) - Lukas Kanade Tracker was used by 0.1 pixel accuracy

15 Lukas-Kanade Tracker

16 Motion Compensated Hybrid Coding (2) - Entropy of the motion vector is 2.28 and 2.45 in x and y. - This brings 0.018 bpp. MSE ~ 35 dB

17 OVERVIEW Motivation Previous Work Comparison Study of Compression Schemes ROI based System Design Conclusion

18 Segmentation - Thresholding to find the air - Gradient magnitude to extract the colon wall - Grassfire operation to find the ROI around the colon wall

19 ROI Based System

20 Experiment with 16 by 16 Blocks - The ratio of ROI ~ %12.2 - Entropy of motion vector is 2.28 in x and 2.45 in y - The entropy of the error image is ~ 4.38 - average RMS error 33.7 dB with lossless in ROI - Overall rate 0.552 bps MSE ~ 33.7 dB

21 Experiment with 8 by 8 Blocks - The ratio of ROI ~ %7.3 - Entropy of motion vector is 1.82 in x and 1.96 in y - The entropy of the error image is ~ 4.31 - average RMS error 30.3 dB with lossless in ROI - Overall rate 0.37 bps MSE ~ 30.3 dB MSE ~ 33.7 dB

22 OVERVIEW Motivation Previous Work Comparison Study of Compression Schemes ROI based System Design Conclusion

23 Effective System (compression rate of %2.3) Accurate System (lossless in ROI) Results of ROI based compression over performs standard compression schemes. Future work includes lossy compression in ROI. Case study with the radiologist for determining rate-diagnosis performance curve.


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