蔡秉宸 IEEE Transactions on Image Processing Sch. of Sci., Xi'an Jiaotong Univ., Xi'an, China.

Slides:



Advertisements
Similar presentations
Object Removal by Exemplar-Based Inpainting Ye Hong CS766 Fall 2004.
Advertisements

Video Inpainting Under Constrained Camera Motion Kedar A. Patwardhan, Student Member, IEEE, Guillermo Sapiro, Senior Member, IEEE, and Marcelo Bertalm.
ITEC810 Final Report Inferring Document Structure Wieyen Lin/ Supervised by Jette Viethen.
Title of Presentation Author 1, Author 2, Author 3, Author 4 Abstract Introduction This is my abstract. This is my abstract. This is my abstract. This.
IEEE TCSVT 2011 Wonjun Kim Chanho Jung Changick Kim
Video Coding with Spatio-temporal Texture Synthesis and Edge-based inpainting Chunbo Zhu, Xiaoyan Sun, Feng Wu, and Houqiang Li ICME 2008.
1 Image Completion using Global Optimization Presented by Tingfan Wu.
Simultaneous Structure and Texture Image Inpainting by: Bertalmio, Sapiro, Vese, Osher Presented by: Shane Brennan June 7, 2007 EE 264 – Spring 2007.
Region Filling and Object Removal by Exemplar-Based Image Inpainting
Image Decomposition and Inpainting By Sparse & Redundant Representations Michael Elad The Computer Science Department The Technion – Israel Institute of.
Image Denoising and Inpainting with Deep Neural Networks Junyuan Xie, Linli Xu, Enhong Chen School of Computer Science and Technology University of Science.
Background Estimation Mehdi Ghayoumi, MD Iftakharul Islam, Muslem Al-Saidi Department of Computer Science Kent State University, Kent, OH
Multiclass object recognition
Online Learning for Matrix Factorization and Sparse Coding
Image restoration using digital inpainting and noise removal Author : Celia A. Zorzo Barcelos, Marcos Aure´lio Batista Source : Image and Vision Computing.
University of Toronto Aug. 11, 2004 Learning the “Epitome” of a Video Sequence Information Processing Workshop 2004 Vincent Cheung Probabilistic and Statistical.
/ 22 1 A Distributed and Efficient Flooding Scheme Using 1-hop Information in Mobile Ad Hoc Networks Hai Liu Xiaohua Jia Peng-Jun Wan Dept. of Comput.
Learning to Sense Sparse Signals: Simultaneous Sensing Matrix and Sparsifying Dictionary Optimization Julio Martin Duarte-Carvajalino, and Guillermo Sapiro.
Image Decomposition, Inpainting, and Impulse Noise Removal by Sparse & Redundant Representations Michael Elad The Computer Science Department The Technion.
Geometry Synthesis Ares Lagae Olivier Dumont Philip Dutré Department of Computer Science Katholieke Universiteit Leuven 10 August, 2004.
Title Authors Introduction Text, text, text, text, text, text Background Information Text, text, text, text, text, text Observations Text, text, text,
A Deafness Free MAC Protocol for Ad Hoc Networks Using Directional Antennas Jia Feng, Pinyi Ren, and Shuangcheng Yan Department of Electronic Engineering.
Student: Chih-Wei Fang ( 方志偉 ) Adviser: Jenn-Jier James Lien ( 連震杰 ) Robotics Laboratory, Department of Computer Science and Information Engineering, National.
Image Research Topics. Colors Color2Grey Colorization Color transfer Color harmonization.
Plug-in and tutorial development for GIMP- Cathy Irwin, 2004 The Development of Image Completion and Tutorial Plug-ins for GIMP By: Cathy Irwin Supervisors:
Image from
Date of download: 7/8/2016 Copyright © 2016 SPIE. All rights reserved. The workflows of the two types of joint sparse representation methods. (a) The workflow.
Technological Uncanny K. S'hell, C Kurtz, N. Vincent et E. André et M. Beugnet 1.
Sparsity Based Poisson Denoising and Inpainting
Poster Title: A Scholarly Presentation of the Practicum
Materials & Methods Introduction Abstract Results Conclusion
PLIP BASED UNSHARP MASKING FOR MEDICAL IMAGE ENHANCEMENT
Systems Biology for Translational Medicine
Your Title Here Your Title Here
TITLE Authors Institution RESULTS INTRODUCTION CONCLUSION AIMS METHODS
Results Introduction Conclusion Participants Data Analysis
Materials & Methods Introduction Abstract Results Conclusion
Motivation and Background
Sparse and Redundant Representations and Their Applications in
Presented by: Mingyuan Zhou Duke University, ECE Feb 22, 2013
Motivation and Background
Introduction Results Conclusions Methods & Materials References
Abstract Methods & Materials Results cont. Conclusion Introduction
© T Madas.
Name of Poster Goes Here
Label Name Label Name Label Name Label Name Label Name Label Name
Grape Detection in Vineyards
Depth Aware Inpainting for Novel View Synthesis Jayant Thatte
Materials & Methods Introduction Abstract Results Conclusion
Hyperspectral Urban Image Inpainting
Abstract Materials & Methods Results Conclusion Introduction
Materials & Methods Introduction Abstract Results Conclusion
Sparse and Redundant Representations and Their Applications in
PRESENTATION TITLE (capital, bold, calibri light, 32)
Your Poster Title Goes Here
Title Introduction: Discussion & Conclusion: Methods & Results:
Domingo Mery Department of Computer Science
Name of Poster Goes Here
Using Association Rules as Texture features
Name of Poster Goes Here
Materials & Methods Introduction Abstract Results Conclusion
Sourse: Information Sciences, Vol. 494, pp , August 2019
Name of Poster Goes Here
Name of Poster Goes Here
Type the title here List the author’s name here 1 List the author’s affiliation here 2 List the author’s affiliation here 3 List the author’s affiliation.
Materials & Methods Introduction Abstract Results Conclusion
Introduction Procedures Results Conclusion Methods References
Presentation transcript:

蔡秉宸 IEEE Transactions on Image Processing Sch. of Sci., Xi'an Jiaotong Univ., Xi'an, China

» Introduction » Background » Patch sparsity -struture sparity -patch sparse representation » Comparision -scatch and text removal -object removal -missing block completion » Conclusion

Inpainting Diffusion-based algorithm Examplar-based algorithm Texture synthesis Bertalmio CriminisiWu wong Sparse representation

» Introduction » Background » Patch sparsity -struture sparity -patch sparse representation » Comparision -scatch and text removal -object removal -missing block completion » Conclusion

» Introduction » Background » Patch sparsity -struture sparity -patch sparse representation » Comparision -scatch and text removal -object removal -missing block completion » Conclusion

BertalmioCriminisiWongPatch sparsity

criminisiwong Patch sparsity

» PROBLEM -smooth,sharpe,consistent » NEW CHANLLENGE -human-being labeled