Method

FusionTrack [FusionTrack]


Submitted on 3 Nov. 2023 08:49 by
weizhen zeng (Tongji university)

Running time:0.1 s
Environment:1 core @ 2.5 Ghz (python)

Method Description:
3D detection is VirConv. 2D detection is rrc.
Parameters:
TBD
Latex Bibtex:

Detailed Results

From all 29 test sequences, our benchmark computes the commonly used tracking metrics CLEARMOT, MT/PT/ML, identity switches, and fragmentations [1,2]. The tables below show all of these metrics.


Benchmark MOTA MOTP MODA MODP
CAR 92.62 % 86.68 % 92.69 % 89.38 %

Benchmark recall precision F1 TP FP FN FAR #objects #trajectories
CAR 96.67 % 96.97 % 96.82 % 38307 1195 1318 10.74 % 45362 828

Benchmark MT PT ML IDS FRAG
CAR 91.69 % 6.46 % 1.85 % 26 87

This table as LaTeX


[1] K. Bernardin, R. Stiefelhagen: Evaluating Multiple Object Tracking Performance: The CLEAR MOT Metrics. JIVP 2008.
[2] Y. Li, C. Huang, R. Nevatia: Learning to associate: HybridBoosted multi-target tracker for crowded scene. CVPR 2009.


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