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Papers/Near-Online Multi-target Tracking with Aggregated Local Fl...

Near-Online Multi-target Tracking with Aggregated Local Flow Descriptor

Wongun Choi

2015-04-09ICCV 2015 12Multiple Object Tracking
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Abstract

In this paper, we focus on the two key aspects of multiple target tracking problem: 1) designing an accurate affinity measure to associate detections and 2) implementing an efficient and accurate (near) online multiple target tracking algorithm. As the first contribution, we introduce a novel Aggregated Local Flow Descriptor (ALFD) that encodes the relative motion pattern between a pair of temporally distant detections using long term interest point trajectories (IPTs). Leveraging on the IPTs, the ALFD provides a robust affinity measure for estimating the likelihood of matching detections regardless of the application scenarios. As another contribution, we present a Near-Online Multi-target Tracking (NOMT) algorithm. The tracking problem is formulated as a data-association between targets and detections in a temporal window, that is performed repeatedly at every frame. While being efficient, NOMT achieves robustness via integrating multiple cues including ALFD metric, target dynamics, appearance similarity, and long term trajectory regularization into the model. Our ablative analysis verifies the superiority of the ALFD metric over the other conventional affinity metrics. We run a comprehensive experimental evaluation on two challenging tracking datasets, KITTI and MOT datasets. The NOMT method combined with ALFD metric achieves the best accuracy in both datasets with significant margins (about 10% higher MOTA) over the state-of-the-arts.

Results

TaskDatasetMetricValueModel
VideoKITTI Test (Online Methods)MOTA78.15NOMT
VideoKITTI Test (Online Methods)MOTA75.2NOMT-HM
Multi-Object TrackingMOT16MOTA46.4NOMT
Object TrackingMOT16MOTA46.4NOMT
Object TrackingKITTI Test (Online Methods)MOTA78.15NOMT
Object TrackingKITTI Test (Online Methods)MOTA75.2NOMT-HM
Multiple Object TrackingKITTI Test (Online Methods)MOTA78.15NOMT
Multiple Object TrackingKITTI Test (Online Methods)MOTA75.2NOMT-HM

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