Course title | |||||
高次元画像解析特論 [Advanced High Dimensional Image Analysis] | |||||
Course category | courses for doctoral programs | Requirement | Credit | 2 | |
Department | Year | ~ | Semester | 3rd | |
Course type | 3rd | Course code | 1080421 | ||
Instructor(s) | |||||
清水 昭伸 [SHIMIZU Akinobu] | |||||
Facility affiliation | Faculty of Engineering | Office | afjgxte/L1151 | Email address |
Course description |
This course treats foundations followed by applications with state of the art technologies about medical image processing and pattern recognition. |
Expected Learning |
You will be able to understand algorithms of medical image analysis and pattern recognition. |
Course schedule |
1 .Orientation, Display of medical volumes. 2. Gray scale image processing (1) : Smoothing and differential filters 3. Gray scale image processing (2) : Local structure enhancement filters 4. Gray scale image processing (3) : Fast computation of spatial filters 5. Segmentation (1) : Binarization 6. Segmentation (2) : Maximum likelihood 7. Segmentation (3) : Maximum a posteriori 8. Segmentation (4) : Active shape model, Level set based segmentation 9. Segmentation (5) : Sparse modeling based segmentation 10. Segmentation (6) : Graph cuts, Random walk 11. Connected component analysis : Labeling, Thinning etc. 12. Pattern recognition (1) : Bayes decision 13. Pattern recognition (2) : Ensemble learning 14. Pattern recognition (3) : Deep learning 15. Conclusion, Report |
Prerequisites |
Algebra, Mathematical analysis,Statistical mathematics of liberal arts course |
Required Text(s) and Materials |
References |
Pattern Recognition and Machine Learning, Christopher Bishop |
Assessment/Grading |
The score is evaluated on the class contribution and report. |
Message from instructor(s) |
I hope you understand the essential of medical image analysis. |
Course keywords |
Image processing, Pattern recognition |
Office hours |
12:00-13:00, Wednesday |
Remarks 1 |
Remarks 2 |
Related URL |
Lecture Language |
Japanese |
Language Subject |
Last update |
3/6/2020 3:00:55 PM |