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MDM2DDGAN Report

LaTeX project for the final report.

Requirements

Make sure VS Code is installed: https://code.visualstudio.com

Installation

Install the LaTeX Workshop vscode extension by James Yu.

Install texlive:

sudo apt install texlive -y
sudo apt install latexmk -y

Add texlive to PATH:

export PATH=$PATH:/usr/local/texlive/2023/bin/x86_64-linux

CVPR 2023 Template

This is the LaTeX template for IEEE/CVF CVPR 2023 submissions, rebuttals, and final versions.

The last version of the CVPR/ICCV LaTeX template had been developed by [email protected] and [email protected] about 15 years ago. That version suffered from several issues:

  • Authors needed several individual files: cvpr.sty, cvpr_eso.sty, eso-pic.sty.
  • For CVPR/ICCV rebuttals, another version of cvpr.sty was required.
  • Several warnings arose due to deprecated options.

To address this, a new package was subsequently developed by Ming-Ming Cheng ([email protected]), which is intended to be used as a single style file that allows to build review, rebuttal, and final versions with just one package.

It is has been further modified by Stefan Roth ([email protected]) for CVPR 2022.

To apply it, simply use one of the following commands:

\documentclass[10pt,twocolumn,letterpaper]{article}

\usepackage[review]{cvpr}      % To produce the REVIEW version
%\usepackage[rebuttal]{cvpr}    % To produce a REBUTTAL
%\usepackage{cvpr}              % To produce the CAMERA-READY version

\def\cvprPaperID{*****} % *** Enter the CVPR Paper ID here
\def\confName{CVPR}
\def\confYear{2023}

Acknowledgements

This template is modified from the template by Ming-Ming Cheng from Nankai University ([email protected], see also https://github.com/MCG-NKU/CVPR_Template). That version was again modified from the the old CVPR/ICCV template files contributed by [email protected] and [email protected].

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Report on improving efficiency of MDM model using a DDGAN

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