MOT16 Results

Click on a measure to sort the table accordingly. See below for a more detailed description.


Showing only entries that use public detections!

TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
dpt_dpt
1. using public detections new
23.9
61.3
±10.7
60.432.1% 18.6% 12,41157,481739 (10.8)1,960 (28.6)148.0Public
Anonymous submission
DS_v2
2. using public detections
25.5
59.3
±12.9
57.524.2% 29.1% 7,46565,810887 (13.9)2,738 (42.8)39.4Public
Anonymous submission
DpTrack
3. using public detections
29.7
59.3
±18.7
52.827.4% 24.6% 8,56663,6032,045 (31.4)1,555 (23.9)10.4Public
Anonymous submission
ReTrack16
4. using public detections
30.7
57.0
±12.3
54.221.9% 34.3% 4,44673,258688 (11.5)1,543 (25.8)0.8Public
Anonymous submission
MHT___ReID
5. using public detections
39.8
56.4
±11.6
54.239.7% 17.4% 23,79154,1691,478 (21.0)1,547 (22.0)0.5Public
Anonymous submission
MPNTrack16
6. using public detections new
20.3
55.9
±11.7
59.926.0% 35.6% 7,08672,902431 (7.2)921 (15.3)11.9Public
Anonymous submission
MTT_TPR
7. using public detections
34.9
54.9
±11.7
53.118.7% 34.8% 4,13076,6731,447 (25.0)3,693 (63.7)6.7Public
Anonymous submission
Tracktor16
8. online method using public detections
34.2
54.4
±12.0
52.519.0% 36.9% 3,28079,149682 (12.1)1,480 (26.2)1.5Public
P. Bergmann, T. Meinhardt, L. Leal-Taixé. Tracking without bells and whistles. In ICCV, 2019.
HDTR
9. using public detections
25.8
53.6
±8.7
46.621.2% 37.0% 4,71479,353618 (10.9)833 (14.7)3.6Public
TPM
10. using public detections
35.6
51.3
±9.3
47.918.7% 40.8% 2,70185,504569 (10.7)707 (13.3)0.8Public
Anonymous submission
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
UTA
11. online method using public detections
40.6
50.6
±7.9
50.418.3% 33.5% 7,75281,584722 (13.1)2,196 (39.7)5.0Public
Anonymous submission
MOTPP16
12. using public detections
32.6
50.5
±9.7
47.219.6% 39.4% 5,93983,694638 (11.8)823 (15.2)3.0Public
Anonymous submission
PV
13. online method using public detections
45.1
50.4
±10.1
50.814.9% 38.9% 2,60086,7801,061 (20.2)3,181 (60.7)7.3Public
Anonymous submission
TTL16
14. online method using public detections new
43.0
50.4
±10.3
50.117.4% 39.9% 8,49181,156807 (14.5)1,251 (22.5)6.7Public
Anonymous submission
MOTHPCLEAN
15. using public detections
31.3
50.4
±9.4
47.019.1% 39.5% 5,33284,505657 (12.2)862 (16.1)11.8Public
Anonymous submission
CRF_TRACK
16. using public detections
30.8
50.3
±7.9
54.418.3% 35.7% 7,14882,746702 (12.9)1,387 (25.4)1.5Public
Anonymous submission
CRFTrack16
17. using public detections
31.4
50.3
±7.9
54.418.3% 35.7% 7,14882,746702 (12.9)1,387 (25.4)1.5Public
Anonymous submission
ENFT16
18. using public detections
28.6
50.3
±8.3
55.019.2% 39.8% 8,34181,843490 (8.9)754 (13.7)0.4Public
BUAA
MOT_FILTER
19. using public detections
34.8
50.2
±12.9
46.817.9% 39.7% 5,26784,812664 (12.4)978 (18.3)11.8Public
Anonymous submission
retrack
20. online method using public detections new
32.1
50.2
±13.5
52.118.4% 34.7% 6,32483,910615 (11.4)2,086 (38.6)22.3Public
Anonymous submission
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
TLO
21. online method using public detections new
44.3
50.1
±9.9
48.116.3% 40.7% 5,58284,629786 (14.7)1,294 (24.1)5.6Public
Anonymous submission
MEN
22. online method using public detections
40.1
50.0
±9.1
52.815.0% 37.0% 6,11784,271706 (13.1)1,797 (33.4)2.0Public
Anonymous submission
SCNet
23. online method using public detections
50.5
50.0
±8.9
51.115.5% 34.1% 10,52679,755866 (15.4)2,141 (38.1)0.3Public
Anonymous submission
pairwise16
24. using public detections
31.0
50.0
±65.9
52.419.4% 38.7% 10,99579,568628 (11.1)939 (16.7)22.3Public
Anonymous submission
ENFT
25. using public detections
24.4
50.0
±8.2
54.617.8% 41.1% 8,21482,541479 (8.8)724 (13.2)22.3Public
Anonymous submission
RTT
26. online method using public detections
46.4
49.9
±8.0
49.319.0% 32.8% 9,92780,406955 (17.1)2,247 (40.2)1.8Public
Anonymous submission
MMHT16
27. online method using public detections
40.7
49.9
±9.8
47.316.2% 40.7% 6,11084,455823 (15.3)1,289 (24.0)12.4Public
Anonymous submission
OMHT16
28. online method using public detections
43.3
49.8
±9.9
46.716.1% 40.4% 6,24484,342888 (16.5)1,332 (24.8)12.4Public
Anonymous submission
CMT16
29. using public detections
27.1
49.8
±9.0
59.216.6% 43.6% 9,22981,882365 (6.6)617 (11.2)6.3Public
#Submission: TIP-21190-2019
NOTA
30. using public detections
31.9
49.8
±8.3
55.317.9% 37.7% 7,24883,614614 (11.3)1,372 (25.3)19.2Public
L. Chen, H. Ai, R. Chen, Z. Zhuang. Aggregate Tracklet Appearance Features for Multi-Object Tracking. In IEEE Signal Processing Letters, 2019.
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
TLO16
31. online method using public detections new
43.0
49.8
±10.0
47.816.6% 40.6% 6,08584,623782 (14.6)1,278 (23.8)12.4Public
Anonymous submission
siameseCos
32. using public detections
39.3
49.4
±8.4
49.819.1% 39.4% 6,28185,384679 (12.8)823 (15.5)0.8Public
In preparation
STCG
33. using public detections
35.1
49.3
±8.6
52.016.2% 41.4% 6,88684,979515 (9.6)775 (14.5)22.3Public
Anonymous submission
HCC
34. using public detections
31.5
49.3
±10.2
50.717.8% 39.9% 5,33386,795391 (7.5)535 (10.2)0.8Public
L. Ma, S. Tang, M. Black, L. Gool. Customized Multi-Person Tracker. In Computer Vision -- ACCV 2018, 2018.
LSST16O
35. online method using public detections
45.0
49.2
±10.2
56.513.4% 41.4% 7,18784,875606 (11.3)2,497 (46.7)2.0Public
Anonymous submission
eTC
36. using public detections
35.5
49.2
±9.1
56.117.3% 40.3% 8,40083,702606 (11.2)882 (16.3)0.7Public
G. Wang, Y. Wang, H. Zhang, R. Gu, J. Hwang. Exploit the connectivity: Multi-object tracking with trackletnet. In Proceedings of the 27th ACM International Conference on Multimedia, 2019.
MOTHP
37. using public detections
36.5
49.1
±9.1
46.920.0% 38.9% 9,03883,031679 (12.5)850 (15.6)11.8Public
Anonymous submission
AFN
38. using public detections
39.9
49.0
±10.2
48.219.1% 35.7% 9,50882,506899 (16.4)1,383 (25.3)0.6Public
H. Shen, L. Huang, C. Huang, W. Xu. Tracklet Association Tracker: An End-to-End Learning-based Association Approach for Multi-Object Tracking. In CoRR, 2018.
CRF_RNN16
39. using public detections
33.0
49.0
±7.2
53.918.1% 35.8% 8,49583,838621 (11.5)1,252 (23.2)1.5Public
Anonymous submission
DAST
40. online method using public detections
39.3
48.9
±8.4
53.215.2% 36.2% 9,98782,427838 (15.3)1,936 (35.3)8.7Public
Anonymous submission
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
KCF16
41. online method using public detections
47.6
48.8
±9.6
47.215.8% 38.1% 5,87586,567906 (17.3)1,116 (21.2)0.1Public
P. Chu, H. Fan, C. Tan, H. Ling. Online Multi-Object Tracking with Instance-Aware Tracker and Dynamic Model Refreshment. In WACV, 2019.
LMP
42. using public detections
36.0
48.8
±9.8
51.318.2% 40.1% 6,65486,245481 (9.1)595 (11.3)0.5Public
S. Tang, M. Andriluka, B. Andres, B. Schiele. Multiple People Tracking with Lifted Multicut and Person Re-identification. In CVPR, 2017.
DeepMP16
43. using public detections
33.8
48.7
±10.3
50.115.0% 43.6% 4,11188,862535 (10.4)873 (17.0)9.9Public
Anonymous submission
TLMHT
44. using public detections
39.3
48.7
±8.6
55.315.7% 44.5% 6,63286,504413 (7.9)642 (12.2)4.8Public
H. Sheng, J. Chen, Y. Zhang, W. Ke, Z. Xiong, J. Yu. Iterative Multiple Hypothesis Tracking with Tracklet-level Association. In IEEE Transactions on Circuits and Systems for Video Technology, 2018.
STRN_MOT16
45. using public detections
44.2
48.5
±8.5
53.917.0% 34.9% 9,03884,178747 (13.9)2,919 (54.2)13.5Public
J. Xu, Y. Cao, Z. Zhang, H. Hu. Spatial-Temporal Relation Networks for Multi-Object Tracking. In ICCV, 2019.
MOTPPF
46. using public detections
35.7
48.4
±8.8
48.519.1% 39.8% 9,15284,266595 (11.1)802 (14.9)11.8Public
Anonymous submission
MOTPP
47. using public detections
40.2
48.3
±8.7
45.418.6% 40.1% 7,37886,181661 (12.5)834 (15.8)11.8Public
Anonymous submission
AOReid
48. online method using public detections
40.7
48.2
±8.7
50.815.3% 36.8% 10,28383,301821 (15.1)1,963 (36.1)11.2Public
Anonymous submission
GCRA
49. using public detections
45.2
48.2
±8.3
48.612.9% 41.1% 5,10488,586821 (16.0)1,117 (21.7)2.8Public
C. Ma, C. Yang, F. Yang, Y. Zhuang, Z. Zhang, H. Jia, X. Xie. Trajectory Factory: Tracklet Cleaving and Re-connection by Deep Siamese Bi-GRU for Multiple Object Tracking. In ICME, 2018.
SRPN16
50. online method using public detections
52.5
48.2
±8.5
51.314.2% 36.8% 7,76785,973790 (14.9)2,006 (38.0)1.4Public
Anonymous submission
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
FWT
51. using public detections
48.5
47.8
±9.4
44.319.1% 38.2% 8,88685,487852 (16.0)1,534 (28.9)0.6Public
R. Henschel, L. Leal-Taixé, D. Cremers, B. Rosenhahn. Fusion of Head and Full-Body Detectors for Multi-Object Tracking. In Trajnet CVPRW, 2018.
MOTDT
52. online method using public detections
45.8
47.6
±8.2
50.915.2% 38.3% 9,25385,431792 (14.9)1,858 (35.0)20.6Public
C. Long, A. Haizhou, Z. Zijie, S. Chong. Real-time Multiple People Tracking with Deeply Learned Candidate Selection and Person Re-identification. In ICME, 2018.
NLLMPa
53. using public detections
39.4
47.6
±10.6
47.317.0% 40.4% 5,84489,093629 (12.3)768 (15.0)8.3Public
E. Levinkov, J. Uhrig, S. Tang, M. Omran, E. Insafutdinov, A. Kirillov, C. Rother, T. Brox, B. Schiele, B. Andres. Joint Graph Decomposition and Node Labeling: Problem, Algorithms, Applications. In CVPR, 2017.
EAGS16
54. using public detections
35.0
47.4
±10.4
50.117.3% 42.7% 8,36986,931575 (11.0)913 (17.5)197.3Public
H. Sheng, X. Zhang, Y. Zhang, Y. Wu, J. Chen. Enhanced Association with Supervoxels in Multiple Hypothesis Tracking. In IEEE Access, 2018.
JCSTD
55. online method using public detections
53.6
47.4
±8.3
41.114.4% 36.4% 8,07686,6381,266 (24.1)2,697 (51.4)8.8Public
W. Tian, M. Lauer, L. Chen. Online Multi-Object Tracking Using Joint Domain Information in Traffic Scenarios. In IEEE Transactions on Intelligent Transportation Systems, 2019.
ASTT
56. using public detections
41.6
47.2
±9.6
44.316.3% 41.6% 4,68090,877633 (12.6)814 (16.2)0.5Public
Yi Tao el al., “Adaptive Spatio-temporal Model Based Multiple Object Tracking Considering a Moving Camera[C]”, International Conference on Universal Village (UV), 2018.
eHAF16
57. using public detections
40.1
47.2
±16.8
52.418.6% 42.8% 12,58683,107542 (10.0)787 (14.5)0.5Public
H. Sheng, Y. Zhang, J. Chen, Z. Xiong, J. Zhang. Heterogeneous Association Graph Fusion for Target Association in Multiple Object Tracking. In IEEE Transactions on Circuits and Systems for Video Technology, 2018.
AMIR
58. online method using public detections
47.8
47.2
±7.7
46.314.0% 41.6% 2,68192,856774 (15.8)1,675 (34.1)1.0Public
A. Sadeghian, A. Alahi, S. Savarese. Tracking The Untrackable: Learning To Track Multiple Cues with Long-Term Dependencies. In ICCV, 2017.
MCjoint
59. using public detections
38.8
47.1
±10.8
52.320.4% 46.9% 6,70389,368370 (7.3)598 (11.7)0.6Public
}@article{DBLP:journals/corr/KeuperTYABS16, author = {Margret Keuper and Siyu Tang and Zhongjie Yu and Bjoern Andres and Thomas Brox and Bernt Schiele}, title = {A Multi-cut Formulation for Joint Segmentation and Tracking of Multiple Objects}, journal = {CoRR}, volume = {abs/1607.06317}, year = {2016}, url = {http://arxiv.org/abs/1607.06317}, timestamp = {Wed, 07 Jun 2017 14:41:31 +0200}, biburl = {http://dblp.uni-trier.de/rec/bib/journals/corr/KeuperTYABS16}, bibsource = {dblp computer science bibliography, http://dblp.org} }
YOONKJ16
60. online method using public detections
49.7
47.0
±8.4
50.116.5% 41.8% 7,90188,179627 (12.1)945 (18.3)3.5Public
Anonymous submission
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
NOMT
61. using public detections
38.6
46.4
±9.9
53.318.3% 41.4% 9,75387,565359 (6.9)504 (9.7)2.6Public
W. Choi. Near-Online Multi-target Tracking with Aggregated Local Flow Descriptor. In ICCV, 2015.
JMC
62. using public detections
47.0
46.3
±9.0
46.315.5% 39.7% 6,37390,914657 (13.1)1,114 (22.2)0.8Public
S. Tang, B. Andres, M. Andriluka, B. Schiele. Multi-Person Tracking by Multicuts and Deep Matching. In BMTT, 2016.
DD_TAMA16
63. online method using public detections
41.3
46.2
±8.4
49.414.1% 44.0% 5,12692,367598 (12.1)1,127 (22.8)6.5Public
Y. Yoon, D. Kim, K. Yoon, Y. Song, M. Jeon. Online Multiple Pedestrian Tracking using Deep Temporal Appearance Matching Association. In arXiv:1907.00831, 2019.
DMAN
64. online method using public detections
45.3
46.1
±11.1
54.817.4% 42.7% 7,90989,874532 (10.5)1,616 (31.9)0.3Public
J. Zhu, H. Yang, N. Liu, M. Kim, W. Zhang, M. Yang. Online Multi-Object Tracking with Dual Matching Attention Networks. In ECCV, 2018.
STAM16
65. online method using public detections
55.8
46.0
±9.1
50.014.6% 43.6% 6,89591,117473 (9.5)1,422 (28.4)0.2Public
Q. Chu, W. Ouyang, H. Li, X. Wang, B. Liu, N. Yu. Online Multi-object Tracking Using CNN-Based Single Object Tracker with Spatial-Temporal Attention Mechanism. In 2017 IEEE International Conference on Computer Vision (ICCV), 2017.
deepS2
66. using public detections
44.7
46.0
±8.2
46.515.5% 42.6% 5,12492,697693 (14.1)759 (15.4)0.7Public
ID 32
RAR16pub
67. online method using public detections
57.3
45.9
±9.7
48.813.2% 41.9% 6,87191,173648 (13.0)1,992 (39.8)0.9Public
K. Fang, Y. Xiang, X. Li, S. Savarese. Recurrent Autoregressive Networks for Online Multi-Object Tracking. In The IEEE Winter Conference on Applications of Computer Vision (WACV), 2018.
MHT_DAM
68. using public detections
47.7
45.8
±8.9
46.116.2% 43.2% 6,41291,758590 (11.9)781 (15.7)0.8Public
C. Kim, F. Li, A. Ciptadi, J. Rehg. Multiple Hypothesis Tracking Revisited. In ICCV, 2015.
MTDF
69. online method using public detections
63.4
45.7
±11.2
40.114.1% 36.4% 12,01884,9701,987 (37.2)3,377 (63.2)1.5Public
Z. Fu, F. Angelini, J. Chambers, S. Naqvi. Multi-Level Cooperative Fusion of GM-PHD Filters for Online Multiple Human Tracking. In IEEE Transactions on Multimedia, 2019.
INTERA_MOT
70. using public detections
43.0
45.4
±8.6
47.718.1% 38.7% 13,40785,547600 (11.3)930 (17.5)4.3Public
L. Lan, X. Wang, S. Zhang, D. Tao, W. Gao, T. Huang. Interacting Tracklets for Multi-object Tracking. In IEEE Transactions on Image Processing, 2018.
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
EDMT
71. using public detections
46.1
45.3
±9.1
47.917.0% 39.9% 11,12287,890639 (12.3)946 (18.3)1.8Public
J. Chen, H. Sheng, Y. Zhang, Z. Xiong. Enhancing Detection Model for Multiple Hypothesis Tracking. In BMTT-PETS CVPRw, 2017.
DCCRF16
72. online method using public detections
57.3
44.8
±9.8
39.714.1% 42.3% 5,61394,133968 (20.0)1,378 (28.5)0.1Public
H. Zhou, W. Ouyang, J. Cheng, X. Wang, H. Li. Deep Continuous Conditional Random Fields with Asymmetric Inter-object Constraints for Online Multi-object Tracking. In IEEE Transactions on Circuits and Systems for Video Technology, 2018.
TBSS
73. online method using public detections
59.8
44.6
±9.3
42.612.3% 43.9% 4,13696,128790 (16.7)1,419 (30.0)3.0Public
X. Zhou, P. Jiang, Z. Wei, H. Dong, F. Wang. Online Multi-Object Tracking with Structural Invariance Constraint. In BMVC, 2018.
QuadMOT16
74. using public detections
58.6
44.1
±9.4
38.314.6% 44.9% 6,38894,775745 (15.5)1,096 (22.8)1.8Public
J. Son, M. Baek, M. Cho, B. Han. Multi-Object Tracking with Quadruplet Convolutional Neural Networks. In CVPR, 2017.
SRPN
75. online method using public detections
61.7
44.0
±10.7
36.615.5% 45.7% 18,78482,3181,047 (19.1)1,118 (20.4)3.9Public
Anonymous submission
CDA_DDALv2
76. online method using public detections
57.0
43.9
±7.8
45.110.7% 44.4% 6,45095,175676 (14.1)1,795 (37.6)0.5Public
S. Bae and K. Yoon, Confidence-Based Data Association and Discriminative Deep Appearance Learning for Robust Online Multi-Object Tracking , In IEEE TPAMI, 2017.
LFNF16
77. using public detections
59.9
43.6
±11.0
41.613.3% 45.7% 6,61695,363836 (17.5)938 (19.7)0.6Public
Sheng H, Hao L, Chen J, et al. Robust Local Effective Matching Model for Multi-Target Tracking. In PCM, 2017
oICF
78. online method using public detections
57.7
43.2
±10.2
49.311.3% 48.5% 6,65196,515381 (8.1)1,404 (29.8)0.4Public
H. Kieritz, S. Becker, W. Hübner, M. Arens. Online Multi-Person Tracking using Integral Channel Features. In IEEE Advanced Video and Signal-based Surveillance (AVSS) 2016, 2016.
AEb
79. using public detections new
38.4
42.9
±11.0
48.715.3% 49.0% 4,48799,310375 (8.2)1,334 (29.3)22.3Public
Anonymous submission
MHT_bLSTM6
80. using public detections
59.2
42.1
±9.7
47.814.9% 44.4% 11,63793,172753 (15.4)1,156 (23.6)1.8Public
C. Kim, F. Li, J. Rehg. Multi-object Tracking with Neural Gating Using Bilinear LSTM. In ECCV, 2018.
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
TestUnsup
81. online method using public detections
56.3
41.5
±9.0
44.913.7% 43.5% 12,59693,404643 (13.2)796 (16.3)19.7Public
Multi Object Tracking using Deep Structural Cost Minimization in Data Association
OST16
82. online method using public detections
63.9
41.5
±9.2
39.110.7% 45.6% 5,91999,7091,056 (23.3)1,487 (32.8)4.7Public
Anonymous submission
LINF1
83. using public detections
54.9
41.0
±9.5
45.711.6% 51.3% 7,89699,224430 (9.4)963 (21.1)4.2Public
L. Fagot-Bouquet, R. Audigier, Y. Dhome, F. Lerasle. Improving Multi-Frame Data Association with Sparse Representations for Robust Near-Online Multi-Object Tracking. In ECCV, 2016.
PHD_GSDL16
84. online method using public detections
65.2
41.0
±8.9
43.111.3% 41.5% 6,49899,2571,810 (39.7)3,650 (80.1)8.3Public
Z. Fu, P. Feng, F. Angelini, J. Chambers, S. Naqvi. Particle PHD Filter based Multiple Human Tracking using Online Group-Structured Dictionary Learning. In IEEE Access, 2018.
PHD_T
85. online method using public detections
61.5
40.3
±9.0
48.311.6% 43.1% 7,147100,895815 (18.2)2,446 (54.8)9.9Public
Anonymous submission
PMPTracker
86. online method using public detections
66.5
40.3
±11.7
38.210.4% 42.0% 10,07197,5241,343 (28.9)2,764 (59.4)148.0Public
Light version of PTZ camera Mutiple People Tracker
AM_ADM
87. online method using public detections
60.7
40.1
±10.1
43.87.1% 46.2% 8,50399,891789 (17.5)1,736 (38.4)5.8Public
S. Lee, M. Kim, S. Bae, Learning Discriminative Appearance Models for Online Multi-Object Tracking with Appearance Discriminability Measures, In IEEE Access, 2018.
D_cost16
88. online method using public detections
52.7
39.9
±9.1
35.38.7% 50.2% 1,133107,586790 (19.3)824 (20.1)8.5Public
Anonymous submission
SDMT
89. online method using public detections
57.5
39.6
±8.3
42.311.7% 49.1% 11,13098,343602 (13.1)772 (16.8)19.8Public
M. Thoreau, N. Kottege. Deep Similarity Metric Learning for Real-Time Pedestrian Tracking. In arXiv, 2018.
EAMTT_pub
90. online method using public detections
62.8
38.8
±8.5
42.47.9% 49.1% 8,114102,452965 (22.0)1,657 (37.8)11.8Public
R. Sanchez-Matilla, F. Poiesi, A. Cavallaro "Multi-target tracking with strong and weak detections" in BMTT ECCVw 2016
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
OVBT
91. online method using public detections
78.4
38.4
±8.8
37.87.5% 47.3% 11,51799,4631,321 (29.1)2,140 (47.1)0.3Public
Y. Ban, S. Ba, X. Alameda-Pineda, R. Horaud. Tracking Multiple Persons Based on a Variational Bayesian Model. In BMTT 2016, .
HAM_ACT16
92. online method using public detections
53.1
38.1
±8.2
43.37.8% 54.4% 6,976105,434418 (9.9)707 (16.8)8.0Public
GMMCP
93. using public detections
68.5
38.1
±7.8
35.58.6% 50.9% 6,607105,315937 (22.2)1,669 (39.5)0.5Public
A. Dehghan, S. Assari, M. Shah.. GMMCP-Tracker:Globally Optimal Generalized Maximum Multi Clique Problem for Multiple Object Tracking. In CVPR, 2015.
LTTSC-CRF
94. using public detections
65.4
37.6
±9.9
42.19.6% 55.2% 11,969101,343481 (10.8)1,012 (22.8)0.6Public
N. Le, A. Heili, M. Odobez. Long-Term Time-Sensitive Costs for CRF-Based Tracking by Detection. In ECCVw, 2016.
GoturnM16
95. online method using public detections
73.7
37.5
±7.5
25.18.4% 46.5% 17,74692,8673,277 (66.8)2,994 (61.0)3.9Public
Anonymous submission
HISP_DAL
96. online method using public detections
67.9
37.4
±8.8
30.57.6% 50.9% 3,222108,8652,101 (52.1)2,151 (53.4)3.3Public
N. Baisa. Robust Online Multi-target Visual Tracking using a HISP Filter with Discriminative Deep Appearance Learning. In CoRR, 2019.
JCmin_MOT
97. online method using public detections
54.8
36.7
±9.1
36.27.5% 54.4% 2,936111,890667 (17.3)831 (21.5)14.8Public
M. Abhijeet Boragule. Joint Cost Minimization for Multi-Object Tracking. In 2017 IEEE International Conference on Advanced Vide and Signale Based Surveillance, 2017.
HISP_T
98. online method using public detections
70.3
35.9
±8.5
28.97.8% 50.1% 6,412107,9182,594 (63.6)2,298 (56.3)4.8Public
N. Baisa. Online Multi-target Visual Tracking using a HISP Filter. In Proceedings of the 13th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications - Volume 5: VISAPP,, 2018.
LP2D
99. using public detections
59.3
35.7
±10.1
34.28.7% 50.7% 5,084111,163915 (23.4)1,264 (32.4)49.3Public
MOT baseline: Linear programming on 2D image coordinates.
GM_PHD_DAL
100. online method using public detections
70.3
35.1
±9.1
26.67.0% 51.4% 2,350111,8864,047 (104.8)5,338 (138.2)3.5Public
N. Baisa. Online Multi-object Visual Tracking using a GM-PHD Filter with Deep Appearance Learning. In 22nd International Conference on Information Fusion, 2019.
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
GM_PHD_Dl
101. online method using public detections
71.3
34.3
±9.1
20.57.1% 51.5% 2,350111,8865,605 (145.1)5,357 (138.7)3.5Public
Anonymous submission
RNN_A_P
102. online method using public detections
75.3
34.0
±8.6
33.77.9% 51.0% 8,562109,2692,479 (61.9)3,393 (84.7)19.7Public
Anonymous submission
GM_PHD_e17
103. online method using public detections
71.8
33.8
±8.9
25.36.3% 54.9% 1,766115,1303,778 (102.5)3,874 (105.1)3.3Public
Anonymous submission
TBD
104. using public detections
79.3
33.7
±9.2
0.07.2% 54.2% 5,804112,5872,418 (63.2)2,252 (58.9)1.3Public
A. Geiger, M. Lauer, C. Wojek, C. Stiller, R. Urtasun. 3D Traffic Scene Understanding from Movable Platforms. In Pattern Analysis and Machine Intelligence (PAMI), 2014.
KVIOU16
105. using public detections
61.3
33.4
±9.7
32.65.9% 59.6% 2,764117,971760 (21.5)1,473 (41.7)29.6Public
Anonymous submission
GM_PHD_N1T
106. online method using public detections
69.7
33.3
±8.9
25.55.5% 56.0% 1,750116,4523,499 (96.8)3,594 (99.5)9.9Public
N. Baisa, A. Wallace. Development of a N-type GM-PHD filter for multiple target, multiple type visual tracking. In Journal of Visual Communication and Image Representation, 2019.
CEM
107. using public detections
62.9
33.2
±7.9
0.07.8% 54.4% 6,837114,322642 (17.2)731 (19.6)0.3Public
A. Milan, S. Roth, K. Schindler. Continuous Energy Minimization for Multitarget Tracking. In IEEE TPAMI, 2014.
CppSORT
108. online method using public detections
63.7
31.5
±9.0
27.74.3% 59.9% 3,048120,2781,587 (46.6)2,239 (65.8)687.1Public
S. Murray. Real-Time Multiple Object Tracking - A Study on the Importance of Speed. In arXiv preprint arXiv:1709.03572, 2017.
GMPHD_HDA
109. online method using public detections
55.2
30.5
±6.9
33.44.6% 59.7% 5,169120,970539 (16.0)731 (21.7)13.6Public
Y. Song, M. Jeon. Online Multiple Object Tracking with the Hierarchically Adopted GM-PHD Filter using Motion and Appearance. In IEEE/IEIE The International Conference on Consumer Electronics (ICCE) Asia, 2016.
SMOT
110. using public detections
88.2
29.7
±7.3
0.05.3% 47.7% 17,426107,5523,108 (75.8)4,483 (109.3)0.2Public
C. Dicle, O. Camps, M. Sznaier. The Way They Move: Tracking Targets with Similar Appearance. In ICCV, 2013.
TrackerAvg RankMOTAIDF1MTMLFPFNID Sw.FragHzDetector
DCOR
111. online method using public detections
63.8
28.3
±9.0
21.73.4% 63.9% 1,618128,345849 (28.7)2,592 (87.5)32.9Public
Anonymous submission
MHT_ReID
112. using public detections
61.9
27.1
±47.2
36.430.6% 31.4% 13,068118,8291,071 (30.8)1,141 (32.8)0.5Public
Anonymous submission
JPDA_m
113. using public detections
55.0
26.2
±6.1
0.04.1% 67.5% 3,689130,549365 (12.9)638 (22.5)22.2Public
H. Rezatofighi, A. Milan, Z. Zhang, Q. Shi, A. Dick, I. Reid. Joint Probabilistic Data Association Revisited. In ICCV, 2015.
DP_NMS
114. using public detections
54.4
26.2
±9.3
31.24.1% 67.5% 3,689130,557365 (12.9)638 (22.5)5.9Public
H. Pirsiavash, D. Ramanan, C. Fowlkes. Globally-Optimal Greedy Algorithms for Tracking a Variable Number of Objects. In CVPR, 2011.
test_trker
115. using public detections
58.2
0.0
±0.0
0.00.0% 100.0% 7182,3260 (nan)0 (nan)22.3Public
Anonymous submission

Due to a minor bug in the export script, all results were re-evaluated on April 11, 2016. Here is the old snapshot of the leaderboard.


Benchmark Statistics

SequencesFramesTrajectoriesBoxes
75919759182326

Difficulty Analysis

Sequence difficulty (from easiest to hardest, measured by average MOTA)

MOT16-03

MOT16-03

(52.7% MOTA)

MOT16-06

MOT16-06

(45.6% MOTA)

MOT16-07

MOT16-07

(39.7% MOTA)

...

...

MOT16-08

MOT16-08

(30.4% MOTA)

MOT16-14

MOT16-14

(25.4% MOTA)


Evaluation Measures

Lower is better. Higher is better.
Measure Better Perfect Description
Avg Rank lower 1 This is the rank of each tracker averaged over all present evaluation measures.
MOTA higher 100 % Multiple Object Tracking Accuracy [1]. This measure combines three error sources: false positives, missed targets and identity switches.
MOTP higher 100 % Multiple Object Tracking Precision [1]. The misalignment between the annotated and the predicted bounding boxes.
IDF1 higher 100 % ID F1 Score [2]. The ratio of correctly identified detections over the average number of ground-truth and computed detections.
FAF lower 0 The average number of false alarms per frame.
MT higher 100 % Mostly tracked targets. The ratio of ground-truth trajectories that are covered by a track hypothesis for at least 80% of their respective life span.
ML lower 0 % Mostly lost targets. The ratio of ground-truth trajectories that are covered by a track hypothesis for at most 20% of their respective life span.
FP lower 0 The total number of false positives.
FN lower 0 The total number of false negatives (missed targets).
ID Sw. lower 0 The total number of identity switches. Please note that we follow the stricter definition of identity switches as described in [3].
Frag lower 0 The total number of times a trajectory is fragmented (i.e. interrupted during tracking).
Hz higher Inf. Processing speed (in frames per second excluding the detector) on the benchmark.

Legend

Symbol Description
online method This is an online (causal) method, i.e. the solution is immediately available with each incoming frame and cannot be changed at any later time.
using public detections This method used the provided detection set as input.
new This entry has been submitted or updated less than a week ago.

References:


[1] Bernardin, K. & Stiefelhagen, R. Evaluating Multiple Object Tracking Performance: The CLEAR MOT Metrics. Image and Video Processing, 2008(1):1-10, 2008.
[2] Ristani, E., Solera, F., Zou, R., Cucchiara, R. & Tomasi, C. Performance Measures and a Data Set for Multi-Target, Multi-Camera Tracking. In ECCV workshop on Benchmarking Multi-Target Tracking, 2016.
[3] Li, Y., Huang, C. & Nevatia, R. Learning to associate: HybridBoosted multi-target tracker for crowded scene. In Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2009.