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Lifting Multi-View Detection and Tracking to the Bird's Eye View

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Taking advantage of multi-view aggregation presents a promising solution to tackle challenges such as occlusion and missed detection in multi-object tracking and detection. Recent advancements in multi-view detection and 3D object recognition have significantly improved performance by strategically projecting all views onto the ground plane and conducting detection analysis from a Bird's Eye View. In this paper, we compare modern lifting methods, both parameter-free and parameterized, to multi-view aggregation. Additionally, we present an architecture that aggregates the features of multiple times steps to learn robust detection and combines appearance- and motion-based cues for tracking. Most current tracking approaches either focus on pedestrians or vehicles. In our work, we combine both branches and add new challenges to multi-view detection with cross-scene setups. Our method generalizes to three public datasets across two domains: (1) pedestrian: Wildtrack and MultiviewX, and (2) roadside perception: Synthehicle, achieving state-of-the-art performance in detection and tracking. https://github.com/tteepe/TrackTacular

Torben Teepe, Philipp Wolters, Johannes Gilg, Fabian Herzog, Gerhard Rigoll• 2024

Related benchmarks

TaskDatasetResultRank
Multi-Camera Multi-Object TrackingWildtrack
IDF195.3
28
Pedestrian DetectionMultiviewX
MODA96.5
21
Pedestrian DetectionWildtrack
MODA93.2
21
Multi-view TrackingMultiviewX
IDF185.6
6
Multi-Object TrackingSynthehicle scene-specific (val)
IDF157.2
2
Multi-Object TrackingSynthehicle cross-scene (test)
IDF124.2
2
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