Implementation of MeMOT - Multi-Object Tracking with Memory - in Pytorch

Overview

MeMOT - Pytorch (wip)

Implementation of MeMOT - Multi-Object Tracking with Memory - in Pytorch.

This paper is just one in a line of work, but important if we want to get self-driving cars working with camera sensors. It also plays into the issue of memory and general video understanding.

Citation

@article{Cai2022MeMOTMT,
  title   = {MeMOT: Multi-Object Tracking with Memory},
  author  = {Jiarui Cai and Mingze Xu and Wei Li and Yuanjun Xiong and Wei Xia and Zhuowen Tu and Stefan 0 Soatto},
  journal = {ArXiv},
  year    = {2022},
  volume  = {abs/2203.16761}
}
Owner
Phil Wang
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