Evaluating Motion Model Hypotheses for Automotive Radar Tracking
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Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Automotive radar is a core ADAS sensor due to weather robustness and direct
Doppler velocity measurements, but radar multi-object tracking is challenged by
heterogeneous and maneuvering target dynamics. This thesis evaluates a white-noise
jerk model (CCA) and a curvilinear motion model (CTCA), each implemented in an
EKF, and assesses whether combining them in an Interacting Multiple Model (IMM)
filter improves robustness across scenarios. To enable an unbiased comparison between
CCA, CTCA, and IMM, process-noise parameters and IMM transition/interactions
are tuned automatically by formulating tracking as a black-box optimization
problem. Performance is optimized using the probabilistic GOSPA (P-GOSPA)
metric, which penalizes localization error as well as missed and false tracks under
multi-Bernoulli set representations. CMA-ES is used to search the nonconvex parameter
space without gradients. Evaluation is performed in a controlled MATLAB
simulation with a four-corner radar configuration and known ground truth, fusing
radar range-rate detections with object-level pseudo-measurements of position
and orientation. Results show strong scenario dependence for single-model tracking
and indicate that automated tuning is necessary to avoid biased motion-model
conclusions, the IMM provides more consistent performance across diverse driving
scenarios than either single model.
Beskrivning
Ämne/nyckelord
EKF, IMM, MOT, Radar, Automated Parameter Tuning, P-GOSPA, CMA-ES
