EarlyBird: Early-Fusion for Multi-View Tracking in the Bird's Eye View

20 Oct 2023  ·  Torben Teepe, Philipp Wolters, Johannes Gilg, Fabian Herzog, Gerhard Rigoll ·

Multi-view aggregation promises to overcome the occlusion and missed detection challenge in multi-object detection and tracking. Recent approaches in multi-view detection and 3D object detection made a huge performance leap by projecting all views to the ground plane and performing the detection in the Bird's Eye View (BEV). In this paper, we investigate if tracking in the BEV can also bring the next performance breakthrough in Multi-Target Multi-Camera (MTMC) tracking. Most current approaches in multi-view tracking perform the detection and tracking task in each view and use graph-based approaches to perform the association of the pedestrian across each view. This spatial association is already solved by detecting each pedestrian once in the BEV, leaving only the problem of temporal association. For the temporal association, we show how to learn strong Re-Identification (re-ID) features for each detection. The results show that early-fusion in the BEV achieves high accuracy for both detection and tracking. EarlyBird outperforms the state-of-the-art methods and improves the current state-of-the-art on Wildtrack by +4.6 MOTA and +5.6 IDF1.

PDF Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Multi-Object Tracking MultiviewX EarlyBird IDF1 82.4 # 2
MOTA 88.4 # 2
Multiview Detection MultiviewX EarlyBird MODA 94.2 # 3
MODP 90.1 # 2
Multi-Object Tracking Wildtrack EarlyBird IDF1 92.3 # 3
MOTA 89.5 # 3
Multiview Detection Wildtrack EarlyBird MODA 91.2 # 6
MODP 81.8 # 2

Methods


No methods listed for this paper. Add relevant methods here