Uncertainty Calibration and its Application to Object Detection
Fabian K\"uppers

TL;DR
This paper investigates the calibration of semantic and spatial uncertainties in object detection models for autonomous driving, proposing methods for better uncertainty estimation and demonstrating their application in object tracking.
Contribution
It introduces new calibration techniques for semantic and spatial uncertainties in object detection, including post-hoc recalibration and probabilistic modeling, with practical application in object tracking.
Findings
Calibration methods improve uncertainty estimation accuracy.
Recalibration reduces miscalibration in semantic uncertainty.
Enhanced uncertainty modeling benefits object tracking performance.
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…
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Taxonomy
TopicsAdvanced Neural Network Applications · CCD and CMOS Imaging Sensors · Adversarial Robustness in Machine Learning
