All Projects → murari023 → Awesome Background Subtraction

murari023 / Awesome Background Subtraction

A curated list of background subtraction related papers and resources

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awesome-background-subtraction

A curated list of background subtraction papers and related applications resources

Upcoming Deadlines for Computer Vision Conferences

  • ICIP - 13 January 2021, Alaska, USA
  • IJCNN - 15 January 2021, Shenjhen, China
  • MICCAI - 19 February 2021, Strasbourg, France
  • ICCV - 17 March 2021, Montreal, Canada
  • ACM MM - 3 April 2021, Chengdu, China
  • FG - 15 April 2021, Jodhpur, India
  • CIKM - TBA, Queensland, Australia
  • WACV - TBA, Usually around June

Contents

Deep Learning based Papers

2020 Papers, 2019 Papers, 2018 Papers, 2017 Papers, 2016 Papers

2020 Papers

2019 Papers

Journals

Conferences

2018 Papers

Journals

Conference

2017 Papers

2016 Papers

GAN Based Papers

2018 Papers

Non-Deep Learning based Papers

Landmark Papers, 2018 Papers, 2017 Papers, 2016 Papers, 2015 Papers

Landmark Papers in Background Subtraction

2018 Papers

2017 Papers

Review/survey Papers

Datasets

Awesome Researchers

Awesome Resources

Projects

Contributions are always welcomed!

If you have any suggestions (missing papers, projects, source code, new papers, key researchers, dataset, etc.), please feel free to edit and pull a request. (or just let me know the title of paper)

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