Tracking Multiple Vehicles Using a Variational Radar Model
High-resolution radar sensors are able to resolve multiple detections per object and therefore provide valuable information for vehicle environment perception. For instance, multiple detections allow to infer the size of an object or to more precisely measure the object's motion. Yet, the incre...
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Zusammenfassung: | High-resolution radar sensors are able to resolve multiple detections per
object and therefore provide valuable information for vehicle environment
perception. For instance, multiple detections allow to infer the size of an
object or to more precisely measure the object's motion. Yet, the increased
amount of data raises the demands on tracking modules: measurement models that
are able to process multiple detections for an object are necessary and
measurement-to-object associations become more complex. This paper presents a
new variational radar model for tracking vehicles using radar detections and
demonstrates how this model can be incorporated into a Random-Finite-Set-based
multi-object filter. The measurement model is learned from actual data using
variational Gaussian mixtures and avoids excessive manual engineering. In
combination with the multiobject tracker, the entire process chain from the raw
measurements to the resulting tracks is formulated probabilistically. The
presented approach is evaluated on experimental data and it is demonstrated
that the data-driven measurement model outperforms a manually designed model. |
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DOI: | 10.48550/arxiv.1711.03799 |