Implementation of ReSeg using PyTorch

Overview

Implementation of ReSeg using PyTorch

Setup

  • Clone this repository : git clone --recursive https://github.com/Wizaron/reseg-pytorch.git
  • Download Pascal-Part Annotations and Pascal VOC 2010 Dataset to "reseg-pytorch/data/raw" then extract tar files.
  • Go to the "reseg-pytorch/code/pytorch" : cd reseg-pytorch/code/pytorch
  • Download and install Anaconda or Miniconda
  • Create environment : conda env create -f pytorch_conda_environment.yml
Owner
Onur Kaplan
Onur Kaplan
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