Offline Object Extraction from Dynamic Occupancy Grid Map Sequences
A dynamic occupancy grid map (DOGMa) allows a fast, robust, and complete environment representation for automated vehicles. Dynamic objects in a DOGMa, however, are commonly represented as independent cells while modeled objects with shape and pose are favorable. The evaluation of algorithms for obj...
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Zusammenfassung: | A dynamic occupancy grid map (DOGMa) allows a fast, robust, and complete
environment representation for automated vehicles. Dynamic objects in a DOGMa,
however, are commonly represented as independent cells while modeled objects
with shape and pose are favorable. The evaluation of algorithms for object
extraction or the training and validation of learning algorithms rely on
labeled ground truth data. Manually annotating objects in a DOGMa to obtain
ground truth data is a time consuming and expensive process. Additionally the
quality of labeled data depend strongly on the variation of filtered input
data. The presented work introduces an automatic labeling process, where a full
sequence is used to extract the best possible object pose and shape in terms of
temporal consistency. A two direction temporal search is executed to trace
single objects over a sequence, where the best estimate of its extent and pose
is refined in every time step. Furthermore, the presented algorithm only uses
statistical constraints of the cell clusters for the object extraction instead
of fixed heuristic parameters. Experimental results show a well-performing
automatic labeling algorithm with real sensor data even at challenging
scenarios. |
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DOI: | 10.48550/arxiv.1804.03933 |