Capturing Object Detection Uncertainty in Multi-Layer Grid Maps
We propose a deep convolutional object detector for automated driving applications that also estimates classification, pose and shape uncertainty of each detected object. The input consists of a multi-layer grid map which is well-suited for sensor fusion, free-space estimation and machine learning....
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Zusammenfassung: | We propose a deep convolutional object detector for automated driving
applications that also estimates classification, pose and shape uncertainty of
each detected object. The input consists of a multi-layer grid map which is
well-suited for sensor fusion, free-space estimation and machine learning.
Based on the estimated pose and shape uncertainty we approximate object hulls
with bounded collision probability which we find helpful for subsequent
trajectory planning tasks. We train our models based on the KITTI object
detection data set. In a quantitative and qualitative evaluation some models
show a similar performance and superior robustness compared to previously
developed object detectors. However, our evaluation also points to undesired
data set properties which should be addressed when training data-driven models
or creating new data sets. |
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DOI: | 10.48550/arxiv.1901.11284 |