Uncertainty Calibration and its Application to Object Detection
- URL: http://arxiv.org/abs/2302.02622v1
- Date: Mon, 6 Feb 2023 08:41:07 GMT
- Title: Uncertainty Calibration and its Application to Object Detection
- Authors: Fabian K\"uppers
- Abstract summary: In this work, we examine the semantic uncertainty (which object type?) as well as the spatial uncertainty.
We evaluate if the predicted uncertainties of an object detection model match with the observed error that is achieved on real-world data.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Image-based environment perception is an important component especially for
driver assistance systems or autonomous driving. In this scope, modern neuronal
networks are used to identify multiple objects as well as the according
position and size information within a single frame. The performance of such an
object detection model is important for the overall performance of the whole
system. However, a detection model might also predict these objects under a
certain degree of uncertainty. [...]
In this work, we examine the semantic uncertainty (which object type?) as
well as the spatial uncertainty (where is the object and how large is it?). We
evaluate if the predicted uncertainties of an object detection model match with
the observed error that is achieved on real-world data. In the first part of
this work, we introduce the definition for confidence calibration of the
semantic uncertainty in the context of object detection, instance segmentation,
and semantic segmentation. We integrate additional position information in our
examinations to evaluate the effect of the object's position on the semantic
calibration properties. Besides measuring calibration, it is also possible to
perform a post-hoc recalibration of semantic uncertainty that might have turned
out to be miscalibrated. [...]
The second part of this work deals with the spatial uncertainty obtained by a
probabilistic detection model. [...] We review and extend common calibration
methods so that it is possible to obtain parametric uncertainty distributions
for the position information in a more flexible way.
In the last part, we demonstrate a possible use-case for our derived
calibration methods in the context of object tracking. [...] We integrate our
previously proposed calibration techniques and demonstrate the usefulness of
semantic and spatial uncertainty calibration in a subsequent process. [...]
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