Endoscope: Difference between revisions
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==Acknowledgements== | ==Acknowledgements== | ||
Andy Lin | Andy Lin <br> | ||
Graduate Student | Graduate Student <br> | ||
Electrical Engineering | Electrical Engineering <br> | ||
Stanford University | Stanford University | ||
Prof Daniel G. Aliaga | Prof Daniel G. Aliaga <br> | ||
Department of Computer Science | Department of Computer Science <br> | ||
Purdue University | Purdue University | ||
Haomiao Jiang | Haomiao Jiang <br> | ||
Psych 221 Mentor | Psych 221 Mentor <br> | ||
Stanford University | Stanford University | ||
Joyce Farrell | Joyce Farrell <br> | ||
Senior Research Engineer | Senior Research Engineer <br> | ||
Electrical Engineering - Information Systems Laboratory | Electrical Engineering - Information Systems Laboratory <br> | ||
Stanford University | Stanford University | ||
Munenori Fukunishi | Munenori Fukunishi <br> | ||
Olympus Corporation representative | Olympus Corporation representative <br> | ||
Project Mentor | Project Mentor | ||
Revision as of 02:08, 14 March 2015
Introduction
Our goal for this project was to learn how to appropriately and accurately apply Geometric calibration to an endoscope and also inverse its distortion in real-time.
Initially, we set out to test the various features of the endoscope and become comfortable with the paired user software needed to collect data. Once this was accomplished, our team had to determine the type of distortion found in the system and decide how to go about accounting for its affect on the various collected images. Once this was achieved and our images free of distortion, we would then be able to move on to our next task, algorithm development for two flash depth estimation. Unfortunately, our endoscope seemed to have variable gain on its light source that would change depending on how far it was to its target, so we were unable to fulfill this second part of the project.
Background
Key Terms
Optical Aberration: errors in an image that are caused mostly by imperfect manufacturing and approximations made based on our knowledge and understanding of light. Some of the more common types are Spherical aberration, Coma, Astigmatism, Curvature of Field, Chromatic aberration, and in our case Distortion
Distortion: a commonly used term in modern day photography that refers to any deviation from rectilinear projection. Though distortion comes in a wide range of patterns and irregular forms, the most common types we see are "Barrel Distortion" and "Pincushion distortion" as depicted below.

Barrel: image magnification decreases with distance from the optical axis.
Geometric Calibration: determination of the geometric relation of the imaging process of a camera
Method
Hardware
Experiment Setup



Procedure
-Setup Endoscope in stationary position
-Capture images of test target in varying orientations and distances with endoscope.
-The image in question should be stationary at each data collection. (30+ images)

Software
Results
Conclusion
Sources
Acknowledgements
Andy Lin
Graduate Student
Electrical Engineering
Stanford University
Prof Daniel G. Aliaga
Department of Computer Science
Purdue University
Haomiao Jiang
Psych 221 Mentor
Stanford University
Joyce Farrell
Senior Research Engineer
Electrical Engineering - Information Systems Laboratory
Stanford University
Munenori Fukunishi
Olympus Corporation representative
Project Mentor
Steven Lansel Olympus Corporation representative Project Mentor