Image Mosaic Techniques for the Restoration of Virtual Heritage Yong-Moo Kwon, Ig-Jae Kim, Tae-Sung Lee, Se-Un Ryu, Jae-Kyung Seol KIST KOREA 2003. 8.

Slides:



Advertisements
Similar presentations
Feature Based Image Mosaicing
Advertisements

Image Registration  Mapping of Evolution. Registration Goals Assume the correspondences are known Find such f() and g() such that the images are best.
Xiaoyong Ye Franz Alexander Van Horenbeke David Abbott
Lecture 11. Microscopy. Optical or light microscopy involves passing visible light transmitted through or reflected from the sample through a single or.
Exploiting Homography in Camera-Projector Systems Tal Blum Jiazhi Ou Dec 11, 2003 [Sukthankar, Stockton & Mullin. ICCV-2001]
Cameras and Projectors
Image Analysis: To utilize the information contained in the digital image data matrix for the purpose of quantification. 1)Particle Counts 2)Area measurements.
Image classification in natural scenes: Are a few selective spectral channels sufficient?
Motivation Spectroscopy is most important analysis tool in all natural sciences Astrophysics, chemical/material sciences, biomedicine, geophysics,… Industry.
Optical Astronomy Imaging Chain: Telescopes & CCDs.
SCANNER IR The IR SCANNER is an infrared reflectographer. The infrared reflectography is an optical technique successfully used in the analisys of old.
Color & Light, Digitalization, Storage. Vision Rods work at low light levels and do not see color –That is, their response depends only on how many photons,
Intelligent Systems Lab. Extrinsic Self Calibration of a Camera and a 3D Laser Range Finder from Natural Scenes Davide Scaramuzza, Ahad Harati, and Roland.
Direct Methods for Visual Scene Reconstruction Paper by Richard Szeliski & Sing Bing Kang Presented by Kristin Branson November 7, 2002.
Lecture 7: Image Alignment and Panoramas CS6670: Computer Vision Noah Snavely What’s inside your fridge?
Image Stitching and Panoramas
CSCE 641 Computer Graphics: Image Mosaicing Jinxiang Chai.
A Novel 2D To 3D Image Technique Based On Object- Oriented Conversion.
Camera Parameters and Calibration. Camera parameters From last time….
Today: Calibration What are the camera parameters?
Digital Cameras (Basics) CCD (charge coupled device): image sensor Resolution: amount of detail the camera can capture Capturing Color: filters go on.
1/22/04© University of Wisconsin, CS559 Spring 2004 Last Time Course introduction Image basics.
55:148 Digital Image Processing Chapter 11 3D Vision, Geometry Topics: Basics of projective geometry Points and hyperplanes in projective space Homography.
 A monitor or display is an electronic visual display for computers.  The monitor consists of : o the display device o circuitry o enclosure The display.
EM SPECTRUM Miscellaneous Wave Properties of Light Light & Color Mirrors & Lenses.
Exploring Color Vision with LED’s Mort Sternheim, Rob Snyder, Chris Emery March, 2014.
Automatic Camera Calibration
Image Stitching Ali Farhadi CSE 455
Multimedia Databases (MMDB)
Automatic Registration of Color Images to 3D Geometry Computer Graphics International 2009 Yunzhen Li and Kok-Lim Low School of Computing National University.
LIGHT.
Digital Face Replacement in Photographs CSC2530F Project Presentation By: Shahzad Malik January 28, 2003.
3D-2D registration Kazunori Umeda Chuo Univ., Japan CRV2010 Tutorial May 30, 2010.
IMAGE MOSAICING Summer School on Document Image Processing
High-Resolution Interactive Panoramas with MPEG-4 발표자 : 김영백 임베디드시스템연구실.
Metrology 1.Perspective distortion. 2.Depth is lost.
Food Quality Evaluation Techniques Beyond the Visible Spectrum Murat Balaban Professor, and Chair of Food Process Engineering Chemical and Materials Engineering.
A Multi-Spectral Structured Light 3D Imaging System MATTHEW BEARDMORE MATTHEW BOWEN.
1 Perception and VR MONT 104S, Fall 2008 Lecture 21 More Graphics for VR.
Local invariant features 1 Thursday October 3 rd 2013 Neelima Chavali Virginia Tech.
Lecture 7: Features Part 2 CS4670/5670: Computer Vision Noah Snavely.
Computer Vision Lecture #10 Hossam Abdelmunim 1 & Aly A. Farag 2 1 Computer & Systems Engineering Department, Ain Shams University, Cairo, Egypt 2 Electerical.
Autonomous Navigation Based on 2-Point Correspondence 2-Point Correspondence using ROS Submitted By: Li-tal Kupperman, Ran Breuer Advisor: Majd Srour,
Sounds of Old Technology IB Assessment Statements Topic 14.2., Data Capture and Digital Imaging Using Charge-Coupled Devices (CCDs) Define capacitance.
Lesson 2. Review - Energy in a Wave A wave is a disturbance that transfers energy from one point to another without transferring matter. In a water wave,
55:148 Digital Image Processing Chapter 11 3D Vision, Geometry Topics: Basics of projective geometry Points and hyperplanes in projective space Homography.
Applying Pixel Values to Digital Images
Inside the Digital Camera. Digital Camera Cross Section The digital camera is a complex device The only part that is the same as film cameras is the lens.
Satellite Derived Bathymetry GEBCO Cookbook
Image-Based Rendering Geometry and light interaction may be difficult and expensive to model –Think of how hard radiosity is –Imagine the complexity of.
DIGITAL IMAGING.
Announcements Final is Thursday, March 18, 10:30-12:20 –MGH 287 Sample final out today.
Trajectory-Based Ball Detection and Tracking with Aid of Homography in Broadcast Tennis Video Xinguo Yu, Nianjuan Jiang, Ee Luang Ang Present by komod.
CSE 185 Introduction to Computer Vision
Acquiring, Stitching and Blending Diffuse Appearance Attributes on 3D Models C. Rocchini, P. Cignoni, C. Montani, R. Scopigno Istituto Scienza e Tecnologia.
Unit 3 – Topic 4 Eyes & Cameras.
CS 4501: Introduction to Computer Vision Sparse Feature Detectors: Harris Corner, Difference of Gaussian Connelly Barnes Slides from Jason Lawrence, Fei.
Motion and Optical Flow
Local features: detection and description May 11th, 2017
Feature description and matching
© 2005 University of Wisconsin
Overview Pin-hole model From 3D to 2D Camera projection
What Is Spectral Imaging? An Introduction
Filtering Things to take away from this lecture An image as a function
Local features and image matching
Filtering An image as a function Digital vs. continuous images
Recognition and Matching based on local invariant features
Local features and image matching May 7th, 2019
Image Stitching Linda Shapiro ECE/CSE 576.
Image Stitching Linda Shapiro ECE P 596.
Presentation transcript:

Image Mosaic Techniques for the Restoration of Virtual Heritage Yong-Moo Kwon, Ig-Jae Kim, Tae-Sung Lee, Se-Un Ryu, Jae-Kyung Seol KIST KOREA

Contents Revisiting Image Mosaic Technique Our Researches for Image Mosaic IR Reflectography Image Mosaic X-Ray Image Mosaic Summary

Revisiting Image Mosaic Technique Image Mosaicing Panorama Image Image Based Rendering (IBR) Basic Algorithm Registration using Features Image Warping based on Homography Matrix Blending Images

Target Dimension in view of Image Mosaicing 2D Target Planar Paintings Image Homography Technique Feature-Based Image Mosaicing 3D Target 3D Real World Image Limitation using Homography Due to Depth Difference b/w Features in Target

Our Research for Image Mosaic 2D Target IR Reflectography Mural Underdrawings Mosaic Special 3D Target X-Ray Imaging Old Sword X-Ray Image Mosaic Research Topics How to extract and use Features Imaging Media (IR, X-Ray) Features characteristics are different from the previous ones

IR Image Mosaic

IR Reflectography System IR Source IR Filter IR Camera Murals

IR Reflectography Principle Back Frame UnderDrawing Color Painting, Dust Visible LightIR Reflection Absorbed

IR Reflectography Camera IR Camera : Super eye C2847 (~1.9 ) Hamamatsu IR Source : ~1.9 IR Filter : CVI Laser Corp. NIR bandwidth filter 800nm ~ 2000nm Pass Bandpass Filter every 100 nm bandpass filter (800nm, 900, …, 2000nm) IR Characteristics to Mural according to WL

IR Camera HAMAMATSU Super eye C2847 WL Range : 0.4 ~ 1.9 IR Source HAMAMATSU C

Sony PC-115 Digital Image Capture Night Shot Filter HAMAMATSU IR-D80A : 0.8 ~ 1.9 CVI Laser corporation Near IR Interference BP filter 800nm, 900nm, … 2000nm

IR Image Mosaic for Mural Underdrawing Basic Method Automatic Feature Extraction Registration Using Features Image Warping Image Blending Main Considerations IR Wavelength Characteristics Penetration Ratio into Paintings Color (Red, Green, Blue etc) Color Painting Depth

Our Approach Automatic Feature Extraction & Registration - Cross Points in IR Underdrawing Image - Grid Pattern for Blank Space Adaptive Overlapping Area For Image Blending - Trade-Off between Registration and Blending * Large Overlapping Area: Good for Registration * Small Overlapping Area: Good for Blending Use feature of IR Spectrum - Use Different IR Wavelength according to paining color

Automatic Feature Extraction Feature of Korea Murals - Many Blank Space - Not so much good features 1> Visible Light Pattern 2> Twice Captures - w/o IR Filter - w/i IR Filter

IR Image Mosaic - Homography Estimation using Grid Image & IR Image - Apply Homography to IR Image

X-RAY Image Mosaic

Why we use X-ray Technique ? Old Sword Old Sword is inside Sword Cover Weak for Touch & Manipulation Cant Open Sword Cover Use X-Ray Technique for the restoration of Old Sword inside Sword Cover

Sword for experiment

Schema of a x-ray imaging using a linear X-Ray Camera 1.X-Ray Image 2.X-Ray Tube 3.X-Rays 4.X-Ray Detector 5.PC 6.Object

Why X-Ray Image Mosaic ? For High Resolution Imaging Multiple X-Ray Imaging Setting Object X-Ray Image Capture Move Object Upward or Downward Step-By-Step Stitching X-Ray Images into High Resolution Image

X-Ray Imaging Principle Basic Principle X-Ray Particle Penetrates through Target One Point Depth -> Grey Value Pixel Dependency Target Depth Target Material

X-Ray Image Characteristics: 2D or 3D ? Target Dimension in view of Image Mosaic Well Controlled Penetration Angle Image Pixel Depends on Penetration Angle Usually Same Penetration Angle for Each Capture Orthogonal axis Movement according to X-Ray Beam Just Planar 2D Image Using CCD Camera Object -> X-Ray Camera -> CCD Camera 2D Target: Homography Technique

X-RAY Image Equipment X-TEK X-Ray SystemX-Ray Source & Object (Sword)

X-RAY Image Capture For High-Resolution Restoration Multiple X-Ray Imaging Image Stitching Technique Feature-based Registration Problem ? Difficult to use features in X-ray Image Using Feature Pattern

Feature Extraction Feature Extraction From Known Pattern Circle Type & Rectangular Type Circle Type -> Pattern Matching Rectangular -> Feature Points

Feature Extraction Method Circle Type Pattern -> Apply Image Labeling Rectangular Type Pattern -> Corner Detection - For every pixel of image, computes first derivatives Dx and Dy. - The eigenvalues are found by solving det(C- λI )= 0 If λ1, λ2 > t, where t is some threshold, then a corner is found at that location

Feature Point Matching Semi-Auto(Present) Automatic Feature Extraction of Rectangle Type pattern Manual Matching Automatic Matching (On-going) Classify the features using pattern ID from Circle Type Pattern Homography Matrix Apply LS-Method(Least Square Method) using Matched feature Points Semi-auto Demo

Implemented S/W X-ray Image File Handling Feature Extraction & Select Points Homograph y Matrix Estimation & Stitching Generated High- Resolution X-ray Image

More Experimentation

Summary Application of Image Mosaicing Techniques Infrared Image X-Ray Image Our Approach Feature Pattern Automatic Feature Extraction & Registration Homography Technique Imaging Media (IR, X-Ray) & Features Characteristics

Thank You !