Learning a Neural Solver for Multiple Object Tracking

CVPR 2020  ·  Guillem Braso, Laura Leal-Taixe ·

Graphs offer a natural way to formulate Multiple Object Tracking (MOT) within the tracking-by-detection paradigm. However, they also introduce a major challenge for learning methods, as defining a model that can operate on such structured domain is not trivial. As a consequence, most learning-based work has been devoted to learning better features for MOT and then using these with well-established optimization frameworks. In this work, we exploit the classical network flow formulation of MOT to define a fully differentiable framework based on Message Passing Networks (MPNs). By operating directly on the graph domain, our method can reason globally over an entire set of detections and predict final solutions. Hence, we show that learning in MOT does not need to be restricted to feature extraction, but it can also be applied to the data association step. We show a significant improvement in both MOTA and IDF1 on three publicly available benchmarks. Our code is available at https://bit.ly/motsolv.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Multi-Object Tracking 2D MOT 2015 MPNTrack MOTA 51.5 # 3
IDF1 58.6 # 2
Multi-Object Tracking MOT16 MPNTrack MOTA 58.6 # 16
IDF1 61.7 # 10
Multi-Object Tracking MOT17 MPNTrack MOTA 58.8 # 30
IDF1 61.7 # 27
Multi-Object Tracking MOT20 MPNTrack MOTA 57.6 # 19
IDF1 59.1 # 18

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