Senior Design Project Megan Luh Hao Luo January 21 2010.

Slides:



Advertisements
Similar presentations
Results/Conclusions: In computer graphics, AR is achieved by the alignment of the virtual camera with the actual camera and the virtual object with the.
Advertisements

COMPUTER-AIDED SURGICAL PLANNING AND PROCEDURES A.Schaeffer; PolyDimensions GmbH, Bickenbach.
ACIP Nathan Bossart Joe Mayer RASCAL ACIP. Background and Current Status RASCAL ACIP Boeing and SSRL Defining Mission Additional Constraints Sensor Software.
Multi-scenario Gesture Recognition Using Kinect Student : Sin- Jhu YE Student Id : MA Computer Engineering & Computer Science University of Louisville.
Vision Based Control Motion Matt Baker Kevin VanDyke.
Advanced Cubesat Imaging Payload Robert Urberger, Joseph Mayer, and Nathan Bossart ECE 490 – Senior Design I – Department of Electrical and Computer Engineering.
Move With Me S.W Graduation Project An Najah National University Engineering Faculty Computer Engineering Department Supervisor : Dr. Raed Al-Qadi Ghada.
Localization of Piled Boxes by Means of the Hough Transform Dimitrios Katsoulas Institute for Pattern Recognition and Image Processing University of Freiburg.
Advanced Cubesat Imaging Payload
Parallel Processing – Final Project Performed by:Nitsan Mane Jonathan Distler PP9.
Scale Invariant Feature Transform (SIFT)
Computer-Aided Diagnosis and Display Lab Department of Radiology, Chapel Hill UNC Julien Jomier, Erwann Rault, and Stephen R. Aylward Computer.
Eye Tracking Project Project Supervisor: Ido Cohen By: Gilad Ambar
The development of object recognition application to automatically count the number of passengers entering the bus Abzal Adilzhan, Serikbolsyn Myrzakhmet.
Computer Assisted Knee Replacement Surgery By (insert surgeon name)
Robotic Needle End Effector for Integration with CT Scan Team Members: David Sun Xuan Truong Chris Willingham Advisor: Dr. Bradford Wood.
Conference Room Laser Pointer System Final Design Report Anna Goncharova Brent Hoover Alex Mendes.
Computer Science AND DOCTORS Jolena Co Truong- 6 th period.
Materials and Costs Accuracy Viable Options Creative Labs Webcam Live! Motion: $102 – Amazon.com Strait-Line X3 Laser Level: $25 – Home Depot Calibration.
Vision Guided Robotics
1 REAL-TIME IMAGE PROCESSING APPROACH TO MEASURE TRAFFIC QUEUE PARAMETERS. M. Fathy and M.Y. Siyal Conference 1995: Image Processing And Its Applications.
Kalman Tracking for Image Processing Applications Student : Julius Oyeleke Supervisor : Dr Martin Glavin Co-Supervisor : Dr Fearghal Morgan.
3D Stereo Reconstruction using iPhone Devices Final Presentation 24/12/ Performed By: Ron Slossberg Omer Shaked Supervised By: Aaron Wetzler.
CS 376b Introduction to Computer Vision 04 / 29 / 2008 Instructor: Michael Eckmann.
Real-Time High Resolution Photogrammetry John Morris, Georgy Gimel’farb and Patrice Delmas CITR, Tamaki Campus, University of Auckland.
Computer-Assisted Knee Replacement Surgery. Knee Replacement Surgery Arthritic surfaces on the tibia and femur are removed. Arthritic surfaces on the.
오 세 영, 이 진 수 전자전기공학과, 뇌연구센터 포항공과대학교
Camera Geometry and Calibration Thanks to Martial Hebert.
Video Overlay Advanced Computer Integrated Surgery ( ) Jeff Hsin, Cyrus Moon, Anand Viswanathan.
Intelligent Vision Systems ENT 496 Object Shape Identification and Representation Hema C.R. Lecture 7.
Senior Design Project Megan Luh Hao Luo March
Fast and Robust Ellipse Detection J Yao, N Kharma et al. Computational Intelligence Lab Electrical & Computer Eng. Dept. Concordia University Montréal,
ECE 172A SIMPLE OBJECT DETECTOR WITH INDICATOR WHEN A NEW OBJECT HAS BEEN ADDED TO OR MISSING IN A ROOM Presented by by Hugo Groening.
Update September 21, 2011 Adrian Fletcher, Jacob Schreiver, Justin Clark, & Nathan Armentrout.
Experimental Study of Sediment Transport in Vegetated and Meandering Channels Jon Schmidt Mentor: Dr. Jennifer Duan Department of Civil Engineering & Engineering.
Stereoscopic Video Overlay with Deformable Registration Balazs Vagvolgyi Prof. Gregory Hager CISST ERC Dr. David Yuh, M.D. Department of Surgery Johns.
Senior Design Project Megan Luh Hao Luo Febrary
Abstract Combines are used in fields to perform the complex operations necessary to effectively harvest crops. The swath width detection system would assist.
Renaissance® Brain Module Sales Presentation. Renaissance Value in Brain Surgery 2 Improves patient care:  Small, frameless platform may improve patient.
Hough Transform Procedure to find a shape in an image Shape can be described in parametric form Shapes in image correspond to a family of parametric solutions.
Senior Design Project Megan Luh (BME) Hao Luo (EE) November 12, 2009.
Visual Odometry David Nister, CVPR 2004
Augmented Reality and 3D modelling Done by Stafford Joemat Supervised by Mr James Connan.
Video Overlay Advanced Computer Integrated Surgery ( ) Jeff Hsin, Cyrus Moon, Anand Viswanathan Final Presentation.
Marco Maisto, Massimo Panella, Luca Liparulo, and Andrea Proietti
I-SNAKE. o WHAT IS I-SNAKE? o COMPONENTS OF I-SNAKE o WHAT IS THE PURPOSE OF NEW CARDIO ARM: o HOW DOES I-SNAKE WORKS? o DEVICE DESIGN o TESTING PROCESS.
RoboCup KSL Design and implementation of vision and image processing core Academic Supervisor: Dr. Kolberg Eli Mentors: Dr. Abramov Benjamin & Mr.
MAV Optical Navigation Software System April 30, 2012 Tom Fritz, Pamela Warman, Richard Woodham Jr, Justin Clark, Andre DeRoux Sponsor: Dr. Adrian Lauf.
Automatic License Plate Recognition for Electronic Payment system Chiu Wing Cheung d.
Face Detection and Notification System Conclusion and Reference
Fluoroscopy Simulation on a Mobile C-arm Computer Integrated Surgery II Spring, 2016 Ju Young Ahn, and Seung Wook Lee, (mentorship by Matthew Jacobson,
Submitted by: Ala Berawi Sujod Makhlof Samah Hanani Supervisor:
Patient Matched Instrumentation
RGBD Camera Integration into CamC Computer Integrated Surgery II Spring, 2015 Han Xiao, under the auspices of Professor Nassir Navab, Bernhard Fuerst and.
UAV Vision Landing Motivation Data Gathered Research Plan Background
Detecting Room Occupancy with Pi Camera
Fast and Robust Ellipse Detection
Fast and Robust Ellipse Detection
Car Recognition Through SIFT Keypoint Matching
NAVIO◊ Surgical System
Efficient Deformable Template Matching for Face Tracking
Backup Car Camera Derek Wachowski.
Higher School of Economics , Moscow, 2016
Robotic Needle End Arm Effector for Integration With CT Scan
Outline H. Murase, and S. K. Nayar, “Visual learning and recognition of 3-D objects from appearance,” International Journal of Computer Vision, vol. 14,
© 2004 – 2011 PAVAC Industries Inc. All rights reserved
Vision Based UAV Landing
M. Kezunovic (P.I.) S. S. Luo D. Ristanovic Texas A&M University
Higher School of Economics , Moscow, 2016
Higher School of Economics , Moscow, 2016
Presentation transcript:

Senior Design Project Megan Luh Hao Luo January

Analysis Problem Statement Current methods of limb alignment are costly and time consuming Dependent on individual surgeon skill for accurate calibration Performance Criteria Constrained by surgical space, time, and resources Limited by lens quality, camera resolution and frame rate, and noise level

Primary Objective Proof of Concept that visual recognition software can be applied to the field of limb alignment in real-time for surgical procedures Improve the method of limb alignment used during surgical procedures Create a new method that is more efficient, can be used in real-time, more economically profitable for hospitals.

Hypothesis Solution: Utilize computer vision software in real time and implement it for limb alignment Goals: Create a computer vision system using OpenCV and design necessary components for surgery

Factors Parameters Quality is determined by the speed, accuracy, and precision of the computer algorithm Overall operating costs are reduced with a faster system Patient and surgeon both benefit from a faster, more accurate system Average operating room costs = $ per min Surgical costs Doctor visits; pre surgery and exams (total 3) $512 MRI $ Hospital $4,909 Anesthesia Doctor Charge: $3591 (surgery) total amounts =10,722.20

Flow Chart

Progress Circle Detection Line Detection Contour Detection

Next Step Length calculation Design cap Camera calibration

Performance Accuracy Effect of Noise 90% accurate Precision 0.01mm to 1mm

Conclusion The goal of this project is to accomplish a proof of concept that visual recognition software can be applied to the field of orthopedic limb alignment in a real-time surgical procedure. We plan to accomplish this by using OpenCV and cameras to detect markers on a cap placed on the tibial head. we hope to continue expanding the program to incorporate depth perception and to calculate alignment.

References Duda, R. O. and P. E. Hart, "Use of the Hough Transformation to Detect Lines and Curves in Pictures," Comm. ACM, Vol. 15, pp. 11–15 (January, 1972). Bradski, Gary, and Adrian Kaehler. "Image Transforms, Contours, Project and 3D vision." In Learning OpenCV: Computer Vision with the OpenCV Library. 1st ed. Sebastopol: O'Reilly Media, Inc., , , , Chleborad, Aaron. "OpenCV's cvReprojectImageTo3D." Graduate Student Robotics Blog. (accessed December 18, 2009).