31
2

SWTrack: Multiple Hypothesis Sliding Window 3D Multi-Object Tracking

Sandro Papais
Robert Ren
Steven Waslander
Abstract

Modern robotic systems are required to operate in dense dynamic environments, requiring highly accurate real-time track identification and estimation. For 3D multi-object tracking, recent approaches process a single measurement frame recursively with greedy association and are prone to errors in ambiguous association decisions. Our method, Sliding Window Tracker (SWTrack), yields more accurate association and state estimation by batch processing many frames of sensor data while being capable of running online in real-time. The most probable track associations are identified by evaluating all possible track hypotheses across the temporal sliding window. A novel graph optimization approach is formulated to solve the multidimensional assignment problem with lifted graph edges introduced to account for missed detections and graph sparsity enforced to retain real-time efficiency. We evaluate our SWTrack implementation2^{2} on the NuScenes autonomous driving dataset to demonstrate improved tracking performance.

View on arXiv
Comments on this paper