Conventional anaglyph

Slides:



Advertisements
Similar presentations
A Multi-Agent Approach to Product Configuration Carlos Roberto Marques Junior
Advertisements

Porto / Portugal 41,3 Km² inhabitants Citizens
Show 5 apples and 3 bananas
September 2, 2014Computer Vision Lecture 1: Human Vision 1 Welcome to CS 675 – Computer Vision Fall 2014 Instructor: Marc Pomplun Instructor: Marc Pomplun.
HARMONICA – HOME PANEL (used for presentation purposes only)
A Robust Method of Detecting Hand Gestures Using Depth Sensors Yan Wen, Chuanyan Hu, Guanghui Yu, Changbo Wang Haptic Audio Visual Environments and Games.
Jeff B. Pelz Visual Perception Laboratory Carlson Center for Imaging Science Rochester Institute of Technology Using Eyetracking to Improve Image Composition.
Machine Vision Basics 1.What is machine vision? 2.Some examples of machine vision applications 3.What can be learned from biological vision? 4.The curse.
Group S1 Jan/Feb 2007Mr T E J Matthews Introduction - familiarisation The Science –Distance Calculations –Limiting Resolution The Fun –3D Images.
Virtual Control of Optical Axis of the 3DTV Camera for Reducing Visual Fatigue in Stereoscopic 3DTV Presenter: Yi Shi & Saul Rodriguez March 26, 2008.
Chapter 6 Color Image Processing Chapter 6 Color Image Processing.
All about 3D Movies Image Source. First, a bit of science: Anaglyph 3D images are made by two layers of different color that are moved slightly and laid.
Vehicle License Plate Detection Algorithm Based on Statistical Characteristics in HSI Color Model Instructor : Dr. K. R. Rao Presented by: Prasanna Venkatesh.
Rome February European Commission Information Society and Media Gala Meeting GaLA Game and Learning Alliance The European Network of Excellence.
Mehdi Ghayoumi MSB rm 132 Ofc hr: Thur, a Machine Learning.
Towards more expressive visualization Rhazes Spell
computer
G52IVG, School of Computer Science, University of Nottingham 1 Administrivia Timetable Lectures, Friday 14:00 – 16:00 Labs, Friday 17:00 -18:00 Assessment.
Pillars Of FPD Growth Full HD 3D Smart TV (Internet Ready)
Lecture Notes in Computer Science Lecture Notes in Computer Science (ISSN ), in short LNCS, is the LNCS series with subseries of Artificial.
Dr. Engr. Sami ur Rahman Digital Image Processing Lecture 1: Introduction.
Seeing © 2014 Project Lead The Way, Inc.Computer Science and Software Engineering.
Digital Image Processing, 2nd ed. © 2002 R. C. Gonzalez & R. E. Woods Chapter 1: Introduction -Produced by Bartlane cable picture.
CS332 Visual Processing Department of Computer Science Wellesley College CS 332 Visual Processing in Computer and Biological Vision Systems Overview of.
IB Computer Science – Logic
International Institute for Geo-Information Science and Earth Observation (ITC) ISL 2004 RiskCity Exercise 2: Stereo image interpretation Cees van Westen.
Monitoring and Enhancing Visual Features (movement, color) as a Method for Predicting Brain Activity Level -in Terms of the Perception of Pain Sensation.
1 Computational Vision CSCI 363, Fall 2012 Lecture 1 Introduction to Vision Science Course webpage:
NEW TRENDS IN EDUCATION OF ROBOTICS Óbuda University, Doctoral School of Safety and Security Sciences, Budapest, Hungary Gyula.
Kalin Penev Heuristic Optimisation of dimensional tests Kalin Penev School of Media, Art and Technology Southampton Solent.
基 督 再 來 (一). 經文: 1 你們心裡不要憂愁;你們信神,也當信我。 2 在我父的家裡有許多住處;若是沒有,我就早 已告訴你們了。我去原是為你們預備地去 。 3 我 若去為你們預備了地方,就必再來接你們到我那 裡去,我在 那裡,叫你們也在那裡, ] ( 約 14 : 1-3)
Image from
Face Detection 蔡宇軒.
Computer Vision UCT2 – Information Technologies MAP-I Doctoral Programme Miguel Tavares Coimbra (Principal Instructor), FC, UP Adérito Fernandes Marcos,
Lecture 4-1CS251: Intro to AI/Lisp II Seeing is Believing April 27th, 1999.
Zachary Starr Dept. of Computer Science, University of Missouri, Columbia, MO 65211, USA Digital Image Processing Final Project Dec 11 th /16 th, 2014.
معرفی مجموعه‌ای از الگوهای فرآيند مخصوص نرم‌افزارهای بی‌درنگ
Notes Over 1.2.
A. M. R. R. Bandara & L. Ranathunga
TJTS505: Master's Thesis Seminar
Light and Color Mansoor Sheik-Bahae PHYS Fall 2000
Lecture 2: Functions and Graphs
Color-Texture Analysis for Content-Based Image Retrieval
Multimedia and Advanced Real Virtual Environments Laboratory
How do we perceive things visually?
Express the following rule in function notation: “subtract 4, then divide by 5”. Select the correct answer: {image}
Evaluate the expression ( i) + ( i) and write the result in the form a + bi. Choose the answer from the following: i i i.
ონლაინ კატალოგში ძიება
Evaluate the expression by sketching a triangle
Use the Table of Integrals to evaluate the integral. {image}
Image Enhancement in the
Physics-based simulation for visual computing applications
Lecture 16 Figures from Gonzalez and Woods, Digital Image Processing, Second Edition, 2002.
19 Dec.2010-Self Controlling-Ali Mohamed
Слайд-дәріс Қарағанды мемлекеттік техникалық университеті
.. -"""--..J '. / /I/I =---=-- -, _ --, _ = :;:.
George Rush Modified by Dr. T
Non-parametric Structural Change Detection in Predictive Relationships
II //II // \ Others Q.
I1I1 a 1·1,.,.,,I.,,I · I 1··n I J,-·
George Rush Modified by Dr. T
Business Process Management: Concepts, Languages, Architectures Second Edition Figures of Chapter 3 Mathias Weske.
Color Image Processing
Instrument Overview Larry Springer HMI Program Manager
CS 332 Visual Processing in Computer and Biological Vision Systems
. '. '. I;.,, - - "!' - -·-·,Ii '.....,,......, -,
Computer Graphics, KKU. Lecture 11
HW1 Business Card Due in class Friday 15 November
Given that {image} {image} Evaluate the limit: {image} Choose the correct answer from the following:
Evaluate the integral {image}
Presentation transcript:

Conventional anaglyph Enhanced anaglyph

Conventional anaglyph Enhanced anaglyph

Conventional anaglyph Enhanced anaglyph

Publications I. Ideses, L. Yaroslavsky, Three Methods that Improve Visual Quality of Color Anaglyphs, Journ. Pure &Appl. Optics, 7, (2005), p. 755-762 L.P. Yaroslavsky, J. Campos, M. Espinola, I. Ideses, Redundancy of stereoscopic images: Experimental evaluation, Optics Express, v. 13, No. 26, Dec. 22, 2005, p. 10895 I. Ideses, L. Yaroslavsky, New methods to produce high quality color anaglyphs for 3-D Visualization, In: , Lecture Notes in Computer Science, Image Analysis and Recognition: International Conference ICIAR 2004, Porto, Portugal, September 29 - October 1, 2004, Proceedings, Part II , Editors:  Aurélio Campilho, Mohamed Kamel p. 273, Springer-Verlag Heidelberg ,ISSN: 0302-9743 , ISBN: 3-540-23240-0