Eccentricity Effect of Motion Silencing on Naturalistic Videos Lark Kwon Choi*, Lawrence K. Cormack, and Alan C. Bovik

Size: px
Start display at page:

Download "Eccentricity Effect of Motion Silencing on Naturalistic Videos Lark Kwon Choi*, Lawrence K. Cormack, and Alan C. Bovik"

Transcription

1 Eccentricity Effect of Motion Silencing on Naturalistic Videos Lark Kwon Choi*, Lawrence K. Cormack, and Alan C. Bovik Dec. 6, 206

2 Outline Introduction Background Visual Masking and Motion Silencing Eccentricity Effect of Motion Silencing Human Subjective Studies Result Analysis Conclusion and Discussion 2

3 Perception of Visual Distortions Humans are generally the ultimate arbiter of digital videos.? Natural Scene Capture Video Processing Processing, Display Human Spatial distortions Blocking Ringing False contouring Blur Noise Temporal distortions Motion compensation mismatch Mosquito effects Ghosting Jerkiness Flickering 3

4 Visual Masking Visibility reduction of a stimulus (target) caused by the presence of another stimulus (mask) in space and/or time. Visibility of distortions is strongly reduced Annoying blocking artifacts Spatial masking is well known and widely used for visual processing. [Bovik, 200; Wang and Bovik, 20] 4

5 Motion Silencing Illusion Temporal Visual Masking is Please not well-modeled, look but temporal at masking a white is evident. dot in the center. Perceive luminance changes of dots. [Suchow and Alvarez, 20] Flicker visibility is strongly reduced with motions. 5

6 Flicker Visibility on Naturalistic Videos Q: Does motion silencing work on real naturalistic videos? Q2: What s motion effects on motion silencing? Q3: What s eccentricity effects on motion silencing? Execute a series of human subjective studies. Develop LIVE Flicker Video Database Phase I: Motion effects Phase II: Motion and eccentricity / eccentricity effects A: Works well. Would be useful for developing VQA algorithms. A2: Large, coherent motions strongly reduce flicker visibility. A3: Large motion and eccentricity much more strongly reduces flicker visibility. 6

7 LIVE Flicker Video Database Source videos using RED ONE cinematographic camera - 3K ( ), 42MB/s (Highest quality), and 30fps. - Diverse object motions. - 6 Source videos and 92 distorted (72 test, 20 training) videos. *Tractor content was obtained from Technical Univ. of Munich. 7

8 Quality levels LIVE Flicker Video Database Quantization Flicker simulations Source video Downsample (720p) H.264 codec compression 4 different quality levels Alternate video frames Excellent (QP26) Good (QP32) (QP44) Poor (QP38) (QP47) Bad (QP44) (QP50) Frames Bad Bad Bad Different Excellent quality level changes Different flicker frequencies QP * : Quantization parameter; Excellent Excellent larger value means more compression. Bad 8

9 Phase I: Motion effects on flicker visibility (Experiment) Extremely Target: Baseball batter in white uniform Highly Medium Please fixate and follow your eyes on the target, and rate the visibility of flickering on the target by moving the mouse up or down the scale continuously. Little When you are ready, Please press the spacebar to play Hardly [Choi et al. QoMEX 203, SPIC 205] 9

10 Flicker visibility Object speed (pixel/frame) Phase I: Motion effects on flicker visibility (Result) P32-QP26 P38-QP26 P44-QP26 bject speed - 43 subjects - Eye tracker (FaceLAb5) - 24 monitor Flicker Visibility Bb QP32-QP26 QP38-QP26 QP44-QP26 Object speed 3Hz 5Hz 7.5Hz Object speed Flicker Visibility Flicker Visibility frame number 20 Bb Bb frame number 40 Bb As motion increases, flicker visibility is strongly suppressed [Choi et al. QoMEX , SPIC ]

11 Gaze Perceive Eccentricity? Motion silencing is a peripheral effect that does not occur near the fixation point. We study eccentricity effect and the combined eccentricity-motion effect on flicker visibility.

12 Phase II: Eccentricity and motion effects on flicker visibility Task Gaze the fixation mark : INSTRUCTION. Please find the red fixation mark (+) and fixate your eyes always on the fixation mark. 2. Rate flicker visibility on the target by moving the mouse up or down continuously. Target: Circled regions on the batter. Extremely Highly + Medium Little When the video begins, the instruction and the rating bar disappear except for a white score gauge. Do immediately move the mouse after pressing the spacebar. When you are ready, please press the spacebar to start. Hardly [Choi et al. GlobalSIP 205] 2

13 Phase II: Eccentricity and motion effects on flicker visibility Task 2 Follow the moving object : INSTRUCTION. Please find the target and fixate your eyes always on the target by following it. 2. Rate flicker visibility on the target by moving the mouse up or down continuously. Target: Circled regions on the batter. Extremely Highly Medium Little When the video begins, the instruction and the rating bar disappear except for a white score gauge. Do immediately move the mouse after pressing the spacebar. When you are ready, please press the spacebar to start. Hardly [Choi et al. GlobalSIP 205] 3

14 Results: Eccentricity and motion effects on flicker visibility - 33 subjects. Please find the red fixation mark (+) and fixate your eyes always on the fixation mark. 2. Rate flicker visibility on the target by moving the mouse moving up or down object ) continuously. Target: Circled regions on the batter. Task ( Gaze the fixation mark ) Eccentricity and motion Task : INSTRUCTION Task 2 ( follow the Motion Extremely Highly Medium Little When the video begins, the instruction and the rating bar disappear except for a white score gauge. Do immediately move the mouse after pressing the spacebar. When you are ready, please press the spacebar to start. As eccentricity increases, flicker visibility is strongly suppressed. Hardly 4

15 Phase II: Eccentricity and motion effects on flicker visibility Ratio = Task ( Gaze the fixation mark ) Flicker visibiity in Task Flicker visibiity in Task 2 + Task 2 ( follow the moving object ) As eccentricity increases, flicker visibility is strongly suppressed. 5

16 Phase II: Eccentricity and motion effects on flicker visibility Ratio = Flicker visibiity in Task Flicker visibiity in Task 2 6

17 Phase II: Eccentricity and motion effects on flicker visibility Correlation Analysis QP44- QP26 QP47- QP26 QP50- QP26 Ratio Ratio Ratio.2 Bb BMX La Mr Rc Tr , Eccentricity Eccentricity Eccentricity , ,

18 Conclusion and Discussions We study eccentricity effects of motion silencing on flicker visibility in naturalistic videos. Eccentricity? Flicker visibility Results show that large eccentric, large motion strongly reduces the visibility of flicker distortions on real videos. LIVE Flicker Video Database (Publicly available). Applications accounting temporal flicker masking: Perceptual flicker visibility models and VQA algorithms. 8

19 Questions? 9

Real-time Simulation of Arbitrary Visual Fields

Real-time Simulation of Arbitrary Visual Fields Real-time Simulation of Arbitrary Visual Fields Wilson S. Geisler University of Texas at Austin geisler@psy.utexas.edu Jeffrey S. Perry University of Texas at Austin perry@psy.utexas.edu Abstract This

More information

ORIGINAL ARTICLE A COMPARATIVE STUDY OF QUALITY ANALYSIS ON VARIOUS IMAGE FORMATS

ORIGINAL ARTICLE A COMPARATIVE STUDY OF QUALITY ANALYSIS ON VARIOUS IMAGE FORMATS ORIGINAL ARTICLE A COMPARATIVE STUDY OF QUALITY ANALYSIS ON VARIOUS IMAGE FORMATS 1 M.S.L.RATNAVATHI, 1 SYEDSHAMEEM, 2 P. KALEE PRASAD, 1 D. VENKATARATNAM 1 Department of ECE, K L University, Guntur 2

More information

VISUAL ARTIFACTS INTERFERENCE UNDERSTANDING AND MODELING (VARIUM)

VISUAL ARTIFACTS INTERFERENCE UNDERSTANDING AND MODELING (VARIUM) Proceedings of Seventh International Workshop on Video Processing and Quality Metrics for Consumer Electronics January 30-February 1, 2013, Scottsdale, Arizona VISUAL ARTIFACTS INTERFERENCE UNDERSTANDING

More information

No-Reference Image Quality Assessment using Blur and Noise

No-Reference Image Quality Assessment using Blur and Noise o-reference Image Quality Assessment using and oise Min Goo Choi, Jung Hoon Jung, and Jae Wook Jeon International Science Inde Electrical and Computer Engineering waset.org/publication/2066 Abstract Assessment

More information

Why Visual Quality Assessment?

Why Visual Quality Assessment? Why Visual Quality Assessment? Sample image-and video-based applications Entertainment Communications Medical imaging Security Monitoring Visual sensing and control Art Why Visual Quality Assessment? What

More information

Image Processing. Michael Kazhdan ( /657) HB Ch FvDFH Ch. 13.1

Image Processing. Michael Kazhdan ( /657) HB Ch FvDFH Ch. 13.1 Image Processing Michael Kazhdan (600.457/657) HB Ch. 14.4 FvDFH Ch. 13.1 Outline Human Vision Image Representation Reducing Color Quantization Artifacts Basic Image Processing Human Vision Model of Human

More information

AN IMPROVED NO-REFERENCE SHARPNESS METRIC BASED ON THE PROBABILITY OF BLUR DETECTION. Niranjan D. Narvekar and Lina J. Karam

AN IMPROVED NO-REFERENCE SHARPNESS METRIC BASED ON THE PROBABILITY OF BLUR DETECTION. Niranjan D. Narvekar and Lina J. Karam AN IMPROVED NO-REFERENCE SHARPNESS METRIC BASED ON THE PROBABILITY OF BLUR DETECTION Niranjan D. Narvekar and Lina J. Karam School of Electrical, Computer, and Energy Engineering Arizona State University,

More information

Human Vision and Human-Computer Interaction. Much content from Jeff Johnson, UI Wizards, Inc.

Human Vision and Human-Computer Interaction. Much content from Jeff Johnson, UI Wizards, Inc. Human Vision and Human-Computer Interaction Much content from Jeff Johnson, UI Wizards, Inc. are these guidelines grounded in perceptual psychology and how can we apply them intelligently? Mach bands:

More information

Assistant Lecturer Sama S. Samaan

Assistant Lecturer Sama S. Samaan MP3 Not only does MPEG define how video is compressed, but it also defines a standard for compressing audio. This standard can be used to compress the audio portion of a movie (in which case the MPEG standard

More information

SUBJECTIVE QUALITY ASSESSMENT OF SCREEN CONTENT IMAGES

SUBJECTIVE QUALITY ASSESSMENT OF SCREEN CONTENT IMAGES SUBJECTIVE QUALITY ASSESSMENT OF SCREEN CONTENT IMAGES Huan Yang 1, Yuming Fang 2, Weisi Lin 1, Zhou Wang 3 1 School of Computer Engineering, Nanyang Technological University, 639798, Singapore. 2 School

More information

Wide-Band Enhancement of TV Images for the Visually Impaired

Wide-Band Enhancement of TV Images for the Visually Impaired Wide-Band Enhancement of TV Images for the Visually Impaired E. Peli, R.B. Goldstein, R.L. Woods, J.H. Kim, Y.Yitzhaky Schepens Eye Research Institute, Harvard Medical School, Boston, MA Association for

More information

Impact of the subjective dataset on the performance of image quality metrics

Impact of the subjective dataset on the performance of image quality metrics Impact of the subjective dataset on the performance of image quality metrics Sylvain Tourancheau, Florent Autrusseau, Parvez Sazzad, Yuukou Horita To cite this version: Sylvain Tourancheau, Florent Autrusseau,

More information

B.A. II Psychology Paper A MOVEMENT PERCEPTION. Dr. Neelam Rathee Department of Psychology G.C.G.-11, Chandigarh

B.A. II Psychology Paper A MOVEMENT PERCEPTION. Dr. Neelam Rathee Department of Psychology G.C.G.-11, Chandigarh B.A. II Psychology Paper A MOVEMENT PERCEPTION Dr. Neelam Rathee Department of Psychology G.C.G.-11, Chandigarh 2 The Perception of Movement Where is it going? 3 Biological Functions of Motion Perception

More information

A No Reference Image Blur Detection using CPBD Metric and Deblurring of Gaussian Blurred Images using Lucy-Richardson Algorithm

A No Reference Image Blur Detection using CPBD Metric and Deblurring of Gaussian Blurred Images using Lucy-Richardson Algorithm A No Reference Image Blur Detection using CPBD Metric and Deblurring of Gaussian Blurred Images using Lucy-Richardson Algorithm Suresh S. Zadage, G. U. Kharat Abstract This paper addresses sharpness of

More information

Perception. What We Will Cover in This Section. Perception. How we interpret the information our senses receive. Overview Perception

Perception. What We Will Cover in This Section. Perception. How we interpret the information our senses receive. Overview Perception Perception 10/3/2002 Perception.ppt 1 What We Will Cover in This Section Overview Perception Visual perception. Organizing principles. 10/3/2002 Perception.ppt 2 Perception How we interpret the information

More information

Compression and Image Formats

Compression and Image Formats Compression Compression and Image Formats Reduce amount of data used to represent an image/video Bit rate and quality requirements Necessary to facilitate transmission and storage Required quality is application

More information

Chapter 6. Experiment 3. Motion sickness and vection with normal and blurred optokinetic stimuli

Chapter 6. Experiment 3. Motion sickness and vection with normal and blurred optokinetic stimuli Chapter 6. Experiment 3. Motion sickness and vection with normal and blurred optokinetic stimuli 6.1 Introduction Chapters 4 and 5 have shown that motion sickness and vection can be manipulated separately

More information

Analysis and Improvement of Image Quality in De-Blocked Images

Analysis and Improvement of Image Quality in De-Blocked Images Vol.2, Issue.4, July-Aug. 2012 pp-2615-2620 ISSN: 2249-6645 Analysis and Improvement of Image Quality in De-Blocked Images U. SRINIVAS M.Tech Student Scholar, DECS, Dept of Electronics and Communication

More information

Temporal Resolution Multiplexing: Exploiting the limitations of spatio-temporal vision for more efficient VR rendering

Temporal Resolution Multiplexing: Exploiting the limitations of spatio-temporal vision for more efficient VR rendering Temporal Resolution Multiplexing: Exploiting the limitations of spatio-temporal vision for more efficient VR rendering Gyorgy Denes Kuba Maruszczyk George Ash Rafał K. Mantiuk University of Cambridge,

More information

Quality Measure of Multicamera Image for Geometric Distortion

Quality Measure of Multicamera Image for Geometric Distortion Quality Measure of Multicamera for Geometric Distortion Mahesh G. Chinchole 1, Prof. Sanjeev.N.Jain 2 M.E. II nd Year student 1, Professor 2, Department of Electronics Engineering, SSVPSBSD College of

More information

Original. Image. Distorted. Image

Original. Image. Distorted. Image An Automatic Image Quality Assessment Technique Incorporating Higher Level Perceptual Factors Wilfried Osberger and Neil Bergmann Space Centre for Satellite Navigation, Queensland University of Technology,

More information

Vision: How does your eye work? Student Version

Vision: How does your eye work? Student Version Vision: How does your eye work? Student Version In this lab, we will explore some of the capabilities and limitations of the eye. We will look Sight is one at of the extent five senses of peripheral that

More information

Measurement of Texture Loss for JPEG 2000 Compression Peter D. Burns and Don Williams* Burns Digital Imaging and *Image Science Associates

Measurement of Texture Loss for JPEG 2000 Compression Peter D. Burns and Don Williams* Burns Digital Imaging and *Image Science Associates Copyright SPIE Measurement of Texture Loss for JPEG Compression Peter D. Burns and Don Williams* Burns Digital Imaging and *Image Science Associates ABSTRACT The capture and retention of image detail are

More information

No-Reference Perceived Image Quality Algorithm for Demosaiced Images

No-Reference Perceived Image Quality Algorithm for Demosaiced Images No-Reference Perceived Image Quality Algorithm for Lamb Anupama Balbhimrao Electronics &Telecommunication Dept. College of Engineering Pune Pune, Maharashtra, India Madhuri Khambete Electronics &Telecommunication

More information

Visual Perception of Images

Visual Perception of Images Visual Perception of Images A processed image is usually intended to be viewed by a human observer. An understanding of how humans perceive visual stimuli the human visual system (HVS) is crucial to the

More information

Vision: How does your eye work? Student Advanced Version Vision Lab - Overview

Vision: How does your eye work? Student Advanced Version Vision Lab - Overview Vision: How does your eye work? Student Advanced Version Vision Lab - Overview In this lab, we will explore some of the capabilities and limitations of the eye. We will look Sight at is the one extent

More information

Transport System. Telematics. Nonlinear background estimation methods for video vehicle tracking systems

Transport System. Telematics. Nonlinear background estimation methods for video vehicle tracking systems Archives of Volume 4 Transport System Issue 4 Telematics November 2011 Nonlinear background estimation methods for video vehicle tracking systems K. OKARMA a, P. MAZUREK a a Faculty of Motor Transport,

More information

Image Enhancement for Astronomical Scenes. Jacob Lucas The Boeing Company Brandoch Calef The Boeing Company Keith Knox Air Force Research Laboratory

Image Enhancement for Astronomical Scenes. Jacob Lucas The Boeing Company Brandoch Calef The Boeing Company Keith Knox Air Force Research Laboratory Image Enhancement for Astronomical Scenes Jacob Lucas The Boeing Company Brandoch Calef The Boeing Company Keith Knox Air Force Research Laboratory ABSTRACT Telescope images of astronomical objects and

More information

COLOR IMAGE QUALITY EVALUATION USING GRAYSCALE METRICS IN CIELAB COLOR SPACE

COLOR IMAGE QUALITY EVALUATION USING GRAYSCALE METRICS IN CIELAB COLOR SPACE COLOR IMAGE QUALITY EVALUATION USING GRAYSCALE METRICS IN CIELAB COLOR SPACE Renata Caminha C. Souza, Lisandro Lovisolo recaminha@gmail.com, lisandro@uerj.br PROSAICO (Processamento de Sinais, Aplicações

More information

Review Paper on. Quantitative Image Quality Assessment Medical Ultrasound Images

Review Paper on. Quantitative Image Quality Assessment Medical Ultrasound Images Review Paper on Quantitative Image Quality Assessment Medical Ultrasound Images Kashyap Swathi Rangaraju, R V College of Engineering, Bangalore, Dr. Kishor Kumar, GE Healthcare, Bangalore C H Renumadhavi

More information

Subjective evaluation of image color damage based on JPEG compression

Subjective evaluation of image color damage based on JPEG compression 2014 Fourth International Conference on Communication Systems and Network Technologies Subjective evaluation of image color damage based on JPEG compression Xiaoqiang He Information Engineering School

More information

Image Processing. Image Processing. What is an Image? Image Resolution. Overview. Sources of Error. Filtering Blur Detect edges

Image Processing. Image Processing. What is an Image? Image Resolution. Overview. Sources of Error. Filtering Blur Detect edges Thomas Funkhouser Princeton University COS 46, Spring 004 Quantization Random dither Ordered dither Floyd-Steinberg dither Pixel operations Add random noise Add luminance Add contrast Add saturation ing

More information

Illusory displacement of equiluminous kinetic edges

Illusory displacement of equiluminous kinetic edges Perception, 1990, volume 19, pages 611-616 Illusory displacement of equiluminous kinetic edges Vilayanur S Ramachandran, Stuart M Anstis Department of Psychology, C-009, University of California at San

More information

NO-REFERENCE IMAGE BLUR ASSESSMENT USING MULTISCALE GRADIENT. Ming-Jun Chen and Alan C. Bovik

NO-REFERENCE IMAGE BLUR ASSESSMENT USING MULTISCALE GRADIENT. Ming-Jun Chen and Alan C. Bovik NO-REFERENCE IMAGE BLUR ASSESSMENT USING MULTISCALE GRADIENT Ming-Jun Chen and Alan C. Bovik Laboratory for Image and Video Engineering (LIVE), Department of Electrical & Computer Engineering, The University

More information

Realistic Image Synthesis

Realistic Image Synthesis Realistic Image Synthesis - HDR Capture & Tone Mapping - Philipp Slusallek Karol Myszkowski Gurprit Singh Karol Myszkowski LDR vs HDR Comparison Various Dynamic Ranges (1) 10-6 10-4 10-2 100 102 104 106

More information

Acquisition and representation of images

Acquisition and representation of images Acquisition and representation of images Stefano Ferrari Università degli Studi di Milano stefano.ferrari@unimi.it Methods for mage Processing academic year 2017 2018 Electromagnetic radiation λ = c ν

More information

Lecture 2: Digital Image Fundamentals -- Sampling & Quantization

Lecture 2: Digital Image Fundamentals -- Sampling & Quantization I2200: Digital Image processing Lecture 2: Digital Image Fundamentals -- Sampling & Quantization Prof. YingLi Tian Sept. 6, 2017 Department of Electrical Engineering The City College of New York The City

More information

Enhanced Functionality of High-Speed Image Processing Engine SUREengine PRO. Sharpness (spatial resolution) Graininess (noise intensity)

Enhanced Functionality of High-Speed Image Processing Engine SUREengine PRO. Sharpness (spatial resolution) Graininess (noise intensity) Vascular Enhanced Functionality of High-Speed Image Processing Engine SUREengine PRO Medical Systems Division, Shimadzu Corporation Yoshiaki Miura 1. Introduction In recent years, digital cardiovascular

More information

FEATURE. Adaptive Temporal Aperture Control for Improving Motion Image Quality of OLED Display

FEATURE. Adaptive Temporal Aperture Control for Improving Motion Image Quality of OLED Display Adaptive Temporal Aperture Control for Improving Motion Image Quality of OLED Display Takenobu Usui, Yoshimichi Takano *1 and Toshihiro Yamamoto *2 * 1 Retired May 217, * 2 NHK Engineering System, Inc

More information

Perceptual and Artistic Principles for Effective Computer Depiction. Gaze Movement & Focal Points

Perceptual and Artistic Principles for Effective Computer Depiction. Gaze Movement & Focal Points Perceptual and Artistic Principles for Effective Computer Depiction Perceptual and Artistic Principles for Effective Computer Depiction Perceptual and Artistic Principles for Effective Computer Depiction

More information

This is due to Purkinje shift. At scotopic conditions, we are more sensitive to blue than to red.

This is due to Purkinje shift. At scotopic conditions, we are more sensitive to blue than to red. 1. We know that the color of a light/object we see depends on the selective transmission or reflections of some wavelengths more than others. Based on this fact, explain why the sky on earth looks blue,

More information

Color and Perception

Color and Perception Color and Perception Why Should We Care? Why Should We Care? Human vision is quirky what we render is not what we see Why Should We Care? Human vision is quirky what we render is not what we see Some errors

More information

Image Processing for feature extraction

Image Processing for feature extraction Image Processing for feature extraction 1 Outline Rationale for image pre-processing Gray-scale transformations Geometric transformations Local preprocessing Reading: Sonka et al 5.1, 5.2, 5.3 2 Image

More information

Module 3: Video Sampling Lecture 18: Filtering operations in Camera and display devices. The Lecture Contains: Effect of Temporal Aperture:

Module 3: Video Sampling Lecture 18: Filtering operations in Camera and display devices. The Lecture Contains: Effect of Temporal Aperture: The Lecture Contains: Effect of Temporal Aperture: Spatial Aperture: Effect of Display Aperture: file:///d /...e%20(ganesh%20rana)/my%20course_ganesh%20rana/prof.%20sumana%20gupta/final%20dvsp/lecture18/18_1.htm[12/30/2015

More information

Virtual Reality I. Visual Imaging in the Electronic Age. Donald P. Greenberg November 9, 2017 Lecture #21

Virtual Reality I. Visual Imaging in the Electronic Age. Donald P. Greenberg November 9, 2017 Lecture #21 Virtual Reality I Visual Imaging in the Electronic Age Donald P. Greenberg November 9, 2017 Lecture #21 1968: Ivan Sutherland 1990s: HMDs, Henry Fuchs 2013: Google Glass History of Virtual Reality 2016:

More information

Practical Content-Adaptive Subsampling for Image and Video Compression

Practical Content-Adaptive Subsampling for Image and Video Compression Practical Content-Adaptive Subsampling for Image and Video Compression Alexander Wong Department of Electrical and Computer Eng. University of Waterloo Waterloo, Ontario, Canada, N2L 3G1 a28wong@engmail.uwaterloo.ca

More information

New standardization activity in display picture quality assessment method

New standardization activity in display picture quality assessment method New standardization activity in display picture quality assessment method 2006. 8. 24 Jongseo Lee LCD Contents Ⅰ ISO issues Pixel defect Ⅱ Gamma Value Calculation Ⅲ Image Sticking Measurement Ⅳ Power Consumption

More information

T I P S F O R I M P R O V I N G I M A G E Q U A L I T Y O N O Z O F O O T A G E

T I P S F O R I M P R O V I N G I M A G E Q U A L I T Y O N O Z O F O O T A G E T I P S F O R I M P R O V I N G I M A G E Q U A L I T Y O N O Z O F O O T A G E Updated 20 th Jan. 2017 References Creator V1.4.0 2 Overview This document will concentrate on OZO Creator s Image Parameter

More information

LED flicker: Root cause, impact and measurement for automotive imaging applications

LED flicker: Root cause, impact and measurement for automotive imaging applications https://doi.org/10.2352/issn.2470-1173.2018.17.avm-146 2018, Society for Imaging Science and Technology LED flicker: Root cause, impact and measurement for automotive imaging applications Brian Deegan;

More information

Perceptual Blur and Ringing Metrics: Application to JPEG2000

Perceptual Blur and Ringing Metrics: Application to JPEG2000 Perceptual Blur and Ringing Metrics: Application to JPEG2000 Pina Marziliano, 1 Frederic Dufaux, 2 Stefan Winkler, 3, Touradj Ebrahimi 2 Genista Corp., 4-23-8 Ebisu, Shibuya-ku, Tokyo 150-0013, Japan Abstract

More information

The eye, displays and visual effects

The eye, displays and visual effects The eye, displays and visual effects Week 2 IAT 814 Lyn Bartram Visible light and surfaces Perception is about understanding patterns of light. Visible light constitutes a very small part of the electromagnetic

More information

Dan Kersten Computational Vision Lab Psychology Department, U. Minnesota SUnS kersten.org

Dan Kersten Computational Vision Lab Psychology Department, U. Minnesota SUnS kersten.org How big is it? Dan Kersten Computational Vision Lab Psychology Department, U. Minnesota SUnS 2009 kersten.org NIH R01 EY015261 NIH P41 008079, P30 NS057091 and the MIND Institute Huseyin Boyaci Bilkent

More information

WHITE PAPER. Methods for Measuring Flat Panel Display Defects and Mura as Correlated to Human Visual Perception

WHITE PAPER. Methods for Measuring Flat Panel Display Defects and Mura as Correlated to Human Visual Perception Methods for Measuring Flat Panel Display Defects and Mura as Correlated to Human Visual Perception Methods for Measuring Flat Panel Display Defects and Mura as Correlated to Human Visual Perception Abstract

More information

Lecture Notes 11 Introduction to Color Imaging

Lecture Notes 11 Introduction to Color Imaging Lecture Notes 11 Introduction to Color Imaging Color filter options Color processing Color interpolation (demozaicing) White balancing Color correction EE 392B: Color Imaging 11-1 Preliminaries Up till

More information

PERCEPTUAL INSIGHTS INTO FOVEATED VIRTUAL REALITY. Anjul Patney Senior Research Scientist

PERCEPTUAL INSIGHTS INTO FOVEATED VIRTUAL REALITY. Anjul Patney Senior Research Scientist PERCEPTUAL INSIGHTS INTO FOVEATED VIRTUAL REALITY Anjul Patney Senior Research Scientist INTRODUCTION Virtual reality is an exciting challenging workload for computer graphics Most VR pixels are peripheral

More information

A machine vision system for scanner-based laser welding of polymers

A machine vision system for scanner-based laser welding of polymers A machine vision system for scanner-based laser welding of polymers Zelmar Echegoyen Fernando Liébana Laser Polymer Welding Recent results and future prospects for industrial applications in a European

More information

IJSER. No Reference Perceptual Quality Assessment of Blocking Effect based on Image Compression

IJSER. No Reference Perceptual Quality Assessment of Blocking Effect based on Image Compression 803 No Reference Perceptual Quality Assessment of Blocking Effect based on Image Compression By Jamila Harbi S 1, and Ammar AL-salihi 1 Al-Mustenseriyah University, College of Sci., Computer Sci. Dept.,

More information

HDR, displays & low-level vision

HDR, displays & low-level vision Rafał K. Mantiuk HDR, displays & low-level vision SIGGRAPH Asia Course on Cutting-Edge VR/AR Display Technologies These slides are a part of the course Cutting-edge VR/AR Display Technologies (Gaze-, Accommodation-,

More information

Lecture 1: image display and representation

Lecture 1: image display and representation Learning Objectives: General concepts of visual perception and continuous and discrete images Review concepts of sampling, convolution, spatial resolution, contrast resolution, and dynamic range through

More information

Acquisition and representation of images

Acquisition and representation of images Acquisition and representation of images Stefano Ferrari Università degli Studi di Milano stefano.ferrari@unimi.it Elaborazione delle immagini (Image processing I) academic year 2011 2012 Electromagnetic

More information

Introduction to Video Forgery Detection: Part I

Introduction to Video Forgery Detection: Part I Introduction to Video Forgery Detection: Part I Detecting Forgery From Static-Scene Video Based on Inconsistency in Noise Level Functions IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, VOL. 5,

More information

MISB RP RECOMMENDED PRACTICE. 25 June H.264 Bandwidth/Quality/Latency Tradeoffs. 1 Scope. 2 Informative References.

MISB RP RECOMMENDED PRACTICE. 25 June H.264 Bandwidth/Quality/Latency Tradeoffs. 1 Scope. 2 Informative References. MISB RP 0904.2 RECOMMENDED PRACTICE H.264 Bandwidth/Quality/Latency Tradeoffs 25 June 2015 1 Scope As high definition (HD) sensors become more widely deployed in the infrastructure, the migration to HD

More information

Image Enhancement for Astronomical Scenes. Jacob Lucas The Boeing Company Brandoch Calef The Boeing Company Keith Knox Air Force Research Laboratory

Image Enhancement for Astronomical Scenes. Jacob Lucas The Boeing Company Brandoch Calef The Boeing Company Keith Knox Air Force Research Laboratory Image Enhancement for Astronomical Scenes Jacob Lucas The Boeing Company Brandoch Calef The Boeing Company Keith Knox Air Force Research Laboratory ABSTRACT Telescope images of astronomical objects and

More information

Templates and Image Pyramids

Templates and Image Pyramids Templates and Image Pyramids 09/07/17 Computational Photography Derek Hoiem, University of Illinois Why does a lower resolution image still make sense to us? What do we lose? Image: http://www.flickr.com/photos/igorms/136916757/

More information

Error Diffusion and Delta-Sigma Modulation for Digital Image Halftoning

Error Diffusion and Delta-Sigma Modulation for Digital Image Halftoning Error Diffusion and Delta-Sigma Modulation for Digital Image Halftoning Thomas D. Kite, Brian L. Evans, and Alan C. Bovik Department of Electrical and Computer Engineering The University of Texas at Austin

More information

Image Distortion Maps 1

Image Distortion Maps 1 Image Distortion Maps Xuemei Zhang, Erick Setiawan, Brian Wandell Image Systems Engineering Program Jordan Hall, Bldg. 42 Stanford University, Stanford, CA 9435 Abstract Subjects examined image pairs consisting

More information

Image Quality Measurement Based On Fuzzy Logic

Image Quality Measurement Based On Fuzzy Logic Image Quality Measurement Based On Fuzzy Logic 1 Ashpreet, 2 Sarbjit Kaur 1 Research Scholar, 2 Assistant Professor MIET Computer Science & Engineering, Kurukshetra University Abstract - Impulse noise

More information

Intelligent Dynamic Noise Reduction (idnr) Technology

Intelligent Dynamic Noise Reduction (idnr) Technology Video Systems Intelligent Dynamic Noise Reduction (idnr) Technology Intelligent Dynamic Noise Reduction (idnr) Technology Innovative technologies found in Bosch HD and Megapixel IP cameras can effectively

More information

Degradation Based Blind Image Quality Evaluation

Degradation Based Blind Image Quality Evaluation Degradation Based Blind Image Quality Evaluation Ville Ojansivu, Leena Lepistö 2, Martti Ilmoniemi 2, and Janne Heikkilä Machine Vision Group, University of Oulu, Finland firstname.lastname@ee.oulu.fi

More information

Analysis on Color Filter Array Image Compression Methods

Analysis on Color Filter Array Image Compression Methods Analysis on Color Filter Array Image Compression Methods Sung Hee Park Electrical Engineering Stanford University Email: shpark7@stanford.edu Albert No Electrical Engineering Stanford University Email:

More information

IMAGE RESTORATION WITH NEURAL NETWORKS. Orazio Gallo Work with Hang Zhao, Iuri Frosio, Jan Kautz

IMAGE RESTORATION WITH NEURAL NETWORKS. Orazio Gallo Work with Hang Zhao, Iuri Frosio, Jan Kautz IMAGE RESTORATION WITH NEURAL NETWORKS Orazio Gallo Work with Hang Zhao, Iuri Frosio, Jan Kautz MOTIVATION The long path of images Bad Pixel Correction Black Level AF/AE Demosaic Denoise Lens Correction

More information

A New Scheme for No Reference Image Quality Assessment

A New Scheme for No Reference Image Quality Assessment Author manuscript, published in "3rd International Conference on Image Processing Theory, Tools and Applications, Istanbul : Turkey (2012)" A New Scheme for No Reference Image Quality Assessment Aladine

More information

Visual Quality Assessment using the IVQUEST software

Visual Quality Assessment using the IVQUEST software Visual Quality Assessment using the IVQUEST software I. Objective The objective of this project is to introduce students to automated visual quality assessment and how it is performed in practice by using

More information

the human chapter 1 Traffic lights the human User-centred Design Light Vision part 1 (modified extract for AISD 2005) Information i/o

the human chapter 1 Traffic lights the human User-centred Design Light Vision part 1 (modified extract for AISD 2005) Information i/o Traffic lights chapter 1 the human part 1 (modified extract for AISD 2005) http://www.baddesigns.com/manylts.html User-centred Design Bad design contradicts facts pertaining to human capabilities Usability

More information

Implementation of a foveated image coding system for image bandwidth reduction. Philip Kortum and Wilson Geisler

Implementation of a foveated image coding system for image bandwidth reduction. Philip Kortum and Wilson Geisler Implementation of a foveated image coding system for image bandwidth reduction Philip Kortum and Wilson Geisler University of Texas Center for Vision and Image Sciences. Austin, Texas 78712 ABSTRACT We

More information

Enhanced Waveform Interpolative Coding at 4 kbps

Enhanced Waveform Interpolative Coding at 4 kbps Enhanced Waveform Interpolative Coding at 4 kbps Oded Gottesman, and Allen Gersho Signal Compression Lab. University of California, Santa Barbara E-mail: [oded, gersho]@scl.ece.ucsb.edu Signal Compression

More information

DCT-based Local Motion Blur Detection

DCT-based Local Motion Blur Detection DCT-based Local Motion Blur Erik Kalalembang 1, Koredianto Usman 1, Irwan Prasetya Gunawan 2 1 Departemen Teknik Elektro, Jurusan Teknik Telekomunikasi, Institut Teknologi Telkom Jl. Telekomunikasi Dayeuhkolot,

More information

Vision V Perceiving Movement

Vision V Perceiving Movement Vision V Perceiving Movement Overview of Topics Chapter 8 in Goldstein (chp. 9 in 7th ed.) Movement is tied up with all other aspects of vision (colour, depth, shape perception...) Differentiating self-motion

More information

Vision V Perceiving Movement

Vision V Perceiving Movement Vision V Perceiving Movement Overview of Topics Chapter 8 in Goldstein (chp. 9 in 7th ed.) Movement is tied up with all other aspects of vision (colour, depth, shape perception...) Differentiating self-motion

More information

VISUAL QUALITY INDICES AND LOW QUALITY IMAGES. Heinz Hofbauer and Andreas Uhl

VISUAL QUALITY INDICES AND LOW QUALITY IMAGES. Heinz Hofbauer and Andreas Uhl VISUAL QUALITY INDICES AND LOW QUALITY IMAGES Heinz Hofbauer and Andreas Uhl Department of Computer Sciences University of Salzburg {hhofbaue, uhl}@cosy.sbg.ac.at ABSTRACT Visual quality indices are frequently

More information

IEEE Signal Processing Letters: SPL Distance-Reciprocal Distortion Measure for Binary Document Images

IEEE Signal Processing Letters: SPL Distance-Reciprocal Distortion Measure for Binary Document Images IEEE SIGNAL PROCESSING LETTERS, VOL. X, NO. Y, Z 2003 1 IEEE Signal Processing Letters: SPL-00466-2002 1) Paper Title Distance-Reciprocal Distortion Measure for Binary Document Images 2) Authors Haiping

More information

S 3 : A Spectral and Spatial Sharpness Measure

S 3 : A Spectral and Spatial Sharpness Measure S 3 : A Spectral and Spatial Sharpness Measure Cuong T. Vu and Damon M. Chandler School of Electrical and Computer Engineering Oklahoma State University Stillwater, OK USA Email: {cuong.vu, damon.chandler}@okstate.edu

More information

PERIPHERAL VISON PATTERN DETECTION DYNAMIC TEST

PERIPHERAL VISON PATTERN DETECTION DYNAMIC TEST PERIPHERAL VISON PATTERN DETECTION DYNAMIC TEST João P Rodrigues, João D Semedo, Fernando M Melicio Institute Systems and Robotics,Technical University, Av Rovisco Pais 1 TN6.21, Lisbon, Portugal jrodrigues@laseeb.org,

More information

Image Processing COS 426

Image Processing COS 426 Image Processing COS 426 What is a Digital Image? A digital image is a discrete array of samples representing a continuous 2D function Continuous function Discrete samples Limitations on Digital Images

More information

Objective and subjective evaluations of some recent image compression algorithms

Objective and subjective evaluations of some recent image compression algorithms 31st Picture Coding Symposium May 31 June 3, 2015, Cairns, Australia Objective and subjective evaluations of some recent image compression algorithms Marco Bernando, Tim Bruylants, Touradj Ebrahimi, Karel

More information

Visual Perception. human perception display devices. CS Visual Perception

Visual Perception. human perception display devices. CS Visual Perception Visual Perception human perception display devices 1 Reference Chapters 4, 5 Designing with the Mind in Mind by Jeff Johnson 2 Visual Perception Most user interfaces are visual in nature. So, it is important

More information

ISSN Vol.03,Issue.29 October-2014, Pages:

ISSN Vol.03,Issue.29 October-2014, Pages: ISSN 2319-8885 Vol.03,Issue.29 October-2014, Pages:5768-5772 www.ijsetr.com Quality Index Assessment for Toned Mapped Images Based on SSIM and NSS Approaches SAMEED SHAIK 1, M. CHAKRAPANI 2 1 PG Scholar,

More information

Human Vision, Color and Basic Image Processing

Human Vision, Color and Basic Image Processing Human Vision, Color and Basic Image Processing Connelly Barnes CS4810 University of Virginia Acknowledgement: slides by Jason Lawrence, Misha Kazhdan, Allison Klein, Tom Funkhouser, Adam Finkelstein and

More information

RECOMMENDATION ITU-R BT SUBJECTIVE ASSESSMENT OF STANDARD DEFINITION DIGITAL TELEVISION (SDTV) SYSTEMS. (Question ITU-R 211/11)

RECOMMENDATION ITU-R BT SUBJECTIVE ASSESSMENT OF STANDARD DEFINITION DIGITAL TELEVISION (SDTV) SYSTEMS. (Question ITU-R 211/11) Rec. ITU-R BT.1129-2 1 RECOMMENDATION ITU-R BT.1129-2 SUBJECTIVE ASSESSMENT OF STANDARD DEFINITION DIGITAL TELEVISION (SDTV) SYSTEMS (Question ITU-R 211/11) Rec. ITU-R BT.1129-2 (1994-1995-1998) The ITU

More information

Evaluación objetiva de la influencia del canal inalámbrico en la calidad de la imagen

Evaluación objetiva de la influencia del canal inalámbrico en la calidad de la imagen ESCUELA TÉCNICA SUPERIOR DE INGENIERÍA DE TELECOMUNICACIÓN UNIVERSIDAD POLITÉCNICA DE CARTAGENA Proyecto Fin de Carrera Evaluación objetiva de la influencia del canal inalámbrico en la calidad de la imagen

More information

Visual Perception. Jeff Avery

Visual Perception. Jeff Avery Visual Perception Jeff Avery Source Chapter 4,5 Designing with Mind in Mind by Jeff Johnson Visual Perception Most user interfaces are visual in nature. So, it is important that we understand the inherent

More information

NOISE SHAPING IN AN ITU-T G.711-INTEROPERABLE EMBEDDED CODEC

NOISE SHAPING IN AN ITU-T G.711-INTEROPERABLE EMBEDDED CODEC NOISE SHAPING IN AN ITU-T G.711-INTEROPERABLE EMBEDDED CODEC Jimmy Lapierre 1, Roch Lefebvre 1, Bruno Bessette 1, Vladimir Malenovsky 1, Redwan Salami 2 1 Université de Sherbrooke, Sherbrooke (Québec),

More information

Image Quality Assessment Techniques V. K. Bhola 1, T. Sharma 2,J. Bhatnagar

Image Quality Assessment Techniques V. K. Bhola 1, T. Sharma 2,J. Bhatnagar Image Quality Assessment Techniques V. K. Bhola 1, T. Sharma 2,J. Bhatnagar 3 1 vijaymmec@gmail.com, 2 tarun2069@gmail.com, 3 jbkrishna3@gmail.com Abstract: Image Quality assessment plays an important

More information

Psychophysics of night vision device halo

Psychophysics of night vision device halo University of Wollongong Research Online Faculty of Health and Behavioural Sciences - Papers (Archive) Faculty of Science, Medicine and Health 2009 Psychophysics of night vision device halo Robert S Allison

More information

Considerations for Standardization of VR Display. Suk-Ju Kang, Sogang University

Considerations for Standardization of VR Display. Suk-Ju Kang, Sogang University Considerations for Standardization of VR Display Suk-Ju Kang, Sogang University Compliance with IEEE Standards Policies and Procedures Subclause 5.2.1 of the IEEE-SA Standards Board Bylaws states, "While

More information

Takeharu Seno 1,3,4, Akiyoshi Kitaoka 2, Stephen Palmisano 5 1

Takeharu Seno 1,3,4, Akiyoshi Kitaoka 2, Stephen Palmisano 5 1 Perception, 13, volume 42, pages 11 1 doi:1.168/p711 SHORT AND SWEET Vection induced by illusory motion in a stationary image Takeharu Seno 1,3,4, Akiyoshi Kitaoka 2, Stephen Palmisano 1 Institute for

More information

MODIFICATION OF ADAPTIVE LOGARITHMIC METHOD FOR DISPLAYING HIGH CONTRAST SCENES BY AUTOMATING THE BIAS VALUE PARAMETER

MODIFICATION OF ADAPTIVE LOGARITHMIC METHOD FOR DISPLAYING HIGH CONTRAST SCENES BY AUTOMATING THE BIAS VALUE PARAMETER International Journal of Information Technology and Knowledge Management January-June 2012, Volume 5, No. 1, pp. 73-77 MODIFICATION OF ADAPTIVE LOGARITHMIC METHOD FOR DISPLAYING HIGH CONTRAST SCENES BY

More information

Graphics and Perception. Carol O Sullivan

Graphics and Perception. Carol O Sullivan Graphics and Perception Carol O Sullivan Carol.OSullivan@cs.tcd.ie Trinity College Dublin Outline Some basics Why perception is important For Modelling For Rendering For Animation Future research - multisensory

More information

Human Visual System. Prof. George Wolberg Dept. of Computer Science City College of New York

Human Visual System. Prof. George Wolberg Dept. of Computer Science City College of New York Human Visual System Prof. George Wolberg Dept. of Computer Science City College of New York Objectives In this lecture we discuss: - Structure of human eye - Mechanics of human visual system (HVS) - Brightness

More information

Visual Effects of Light. Prof. Grega Bizjak, PhD Laboratory of Lighting and Photometry Faculty of Electrical Engineering University of Ljubljana

Visual Effects of Light. Prof. Grega Bizjak, PhD Laboratory of Lighting and Photometry Faculty of Electrical Engineering University of Ljubljana Visual Effects of Light Prof. Grega Bizjak, PhD Laboratory of Lighting and Photometry Faculty of Electrical Engineering University of Ljubljana Light is life If sun would turn off the life on earth would

More information