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Multi-Class Multi-Object Tracking using Changing Point Detection

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This paper presents a robust multi-class multi-object tracking (MCMOT) formulated by a Bayesian filtering framework. Multi-object tracking for unlimited object classes is conducted by combining detection responses and changing point detection (CPD) algorithm. The CPD model is used to observe abrupt or abnormal changes due to a drift and an occlusion based spatiotemporal characteristics of track states. The ensemble of convolutional neural network (CNN) based object detector and Lucas-Kanede Tracker (KLT) based motion detector is employed to compute the likelihoods of foreground regions as the detection responses of different object classes. Extensive experiments are performed using lately introduced challenging benchmark videos; ImageNet VID and MOT benchmark dataset. The comparison to state-of-the-art video tracking techniques shows very encouraging results.

Byungjae Lee, Enkhbayar Erdenee, Songguo Jin, Phill Kyu Rhee• 2016

Related benchmarks

TaskDatasetResultRank
Multi-Object TrackingMOT16 (test)
MOTA62.4
228
Multi-Object TrackingMOT 2016 (test)
MOTA62.4
59
Multi-Object TrackingKITTI Tracking (test)
MOTA78.9
56
Multi-Object TrackingKITTI (test)
MOTA78.9
51
Multi-Object TrackingImageNet VID (val)
Mean AP74.5
7
Multi-Object TrackingKITTI MOT Car class 1.0 (test)
MOTA78.9
4
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