WuYang: Difference between revisions

From Psych 221 Image Systems Engineering
Jump to navigation Jump to search
imported>Projects221
imported>Projects221
Line 26: Line 26:
List references. Include links to papers that are online.
List references. Include links to papers that are online.


[http://onlinelibrary.wiley.com/doi/10.1046/j.1365-2818.1996.122402.x/full#content] Scalettar, B. A., et al. "Dispersion, aberration and deconvolution in multi‐wavelength fluorescence images." Journal of microscopy 182.1 (1996): 50-60.


[1] Coral Watch Project http://www.coralwatch.org/
[http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=4587834&tag=1] Joshi, Neel, Richard Szeliski, and David Kriegman. "PSF estimation using sharp edge prediction." Computer Vision and Pattern Recognition, 2008. CVPR 2008. IEEE Conference on. IEEE, 2008.


[2] Raimondo Schettini and Silvia Corchs, "Underwater Image Processing: State of the Art of Restoration and Image Enhancement Methods" EURASIP Journal on Advances in Signal Processing, Volume 2010, Article ID 746052, 14 pages
[http://people.csail.mit.edu/yichangshih/lensEnhancement/] Shih, Yichang, Brian Guenter, and Neel Joshi. "Image enhancement using calibrated lens simulations." Computer Vision–ECCV 2012. Springer Berlin Heidelberg, 2012. 42-56.


[3] Brian A. Wandell, Foundations of Vision, Chapter 9. https://www.stanford.edu/group/vista/cgi-bin/FOV/chapter-9-color/#Linear_Models
[http://www.cs.ubc.ca/labs/imager/tr/2013/SimpleLensImaging/] Heide, Felix, et al. "High-quality computational imaging through simple lenses." ACM Transactions on Graphics (TOG) 32.5 (2013): 149.


[4] Jong-Il Park, Moon-Hyun Lee, Michael D. Grossberg, and Shree K. Nayar "Multispectral Imaging Using Multiplexed Illumination" Computer Vision, 2007. ICCV 2007. IEEE 11th International Conference on
[http://www.ipol.im/pub/art/2012/admm-nppsf/] Delbracio, Mauricio, Pablo Musé, and Andrés Almansa. "Non-parametric sub-pixel local point spread function estimation." Image Processing On Line (2012).


=Appendix I=
=Appendix I=

Revision as of 03:25, 15 March 2014

http://white.stanford.edu/teach/index.php/Psych221_Project_Suggestions#Psf_analysis_and_image_deblurring_using_a_simulated_camera_lens Tony Wu, Samuel Yang

Back to Psych 221 Projects 2014

Psf analysis and image deblurring using a simulated camera lens

text

Introduction

Motivate the problem. Describe what has been done in the past.

The image capture process in often produce a sampled image that contains a blurred signal due to various optical parameters, including the lens and sensor objects. With the knowledge of the blur, which is fully characterized by a set of point spread functions, one for each position in the scene, it is possible to recover a sharp image by deblurring the captured imaging using the known point spread functions using deconvolution. In this way, it is possible to computationally correct for optical aberrations in the camera system.

Background

What is known from the literature.

Methods

Describe techniques you used to measure and analyze. Describe the instruments, and experimental procedures in enough detail so that someone could repeat your analysis. What software did you use? What was the idea of the algorithms and data analysis?

Results

Organize your results in a good logical order (not necessarily historical order). Include relevant graphs and/or images. Make sure graph axes are labeled. Make sure you draw the reader's attention to the key element of the figure. The key aspect should be the most visible element of the figure or graph. Help the reader by writing a clear figure caption.

Conclusions

Describe what you learned. What worked? What didn't? Why? What should someone next year try?

References

List references. Include links to papers that are online.

[1] Scalettar, B. A., et al. "Dispersion, aberration and deconvolution in multi‐wavelength fluorescence images." Journal of microscopy 182.1 (1996): 50-60.

[2] Joshi, Neel, Richard Szeliski, and David Kriegman. "PSF estimation using sharp edge prediction." Computer Vision and Pattern Recognition, 2008. CVPR 2008. IEEE Conference on. IEEE, 2008.

[3] Shih, Yichang, Brian Guenter, and Neel Joshi. "Image enhancement using calibrated lens simulations." Computer Vision–ECCV 2012. Springer Berlin Heidelberg, 2012. 42-56.

[4] Heide, Felix, et al. "High-quality computational imaging through simple lenses." ACM Transactions on Graphics (TOG) 32.5 (2013): 149.

[5] Delbracio, Mauricio, Pablo Musé, and Andrés Almansa. "Non-parametric sub-pixel local point spread function estimation." Image Processing On Line (2012).

Appendix I

Upload source code, test images, etc, and give a description of each link. In some cases, your acquired data may be too large to store practically. In this case, use your judgement (or consult one of us) and only link the most relevant data. Be sure to describe the purpose of your code and to edit the code for clarity. The purpose of placing the code online is to allow others to verify your methods and to learn from your ideas.



Image Systems Engineering Toolbox http://imageval.com/

Canon Hack Development Kit http://chdk.wikia.com/wiki/CHDK

Appendix II

(for groups only) - Work breakdown. Explain how the project work was divided among group members.