Abstract

The challenging task of multi-object tracking (MOT) requires simultaneous reasoning about track initialization, identity, and spatio-temporal trajectories. We formulate this task as a frame-to-frame set prediction problem and introduce TrackFormer, an end-to-end trainable MOT approach based on an encoder-decoder Transformer architecture. Our model achieves data association between frames via attention by evolving a set of track predictions through a video sequence. The Transformer decoder initializes new tracks from static object queries and autoregressively follows existing tracks in space and time with the conceptually new and identity preserving track queries. Both query types benefit from self- and…

Citation impact

938
total citations
FWCI
48.80
Percentile
100%
References
86
Citations per year

Authors

4

Topics & keywords

Keywords
  • Computer science
  • Initialization
  • Video tracking
  • Artificial intelligence
  • Encoder
  • Transformer
  • Computer vision
  • Object (grammar)
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