The 1st-place Solution for ECCV 2022 Multiple People Tracking in Group Dance Challenge

10/27/2022
by   Yuang Zhang, et al.
5

We present our 1st place solution to the Group Dance Multiple People Tracking Challenge. Based on MOTR: End-to-End Multiple-Object Tracking with Transformer, we explore: 1) detect queries as anchors, 2) tracking as query denoising, 3) joint training on pseudo video clips generated from CrowdHuman dataset, and 4) using the YOLOX detection proposals for the anchor initialization of detect queries. Our method achieves 73.4 the second-place solution by +6.8

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