Probabilistic Object Detection with Conformal Prediction
Christopher Ries, Moussa Kassem Sbeyti, Nicolas Bianco, Nadja Klein

TL;DR
This paper applies and extends conformal prediction for probabilistic object detection, improving uncertainty quantification and interval sharpness across autonomous driving datasets.
Contribution
It systematically compares scaled and unscaled conformal prediction methods and integrates them with probabilistic uncertainty estimates for object detection.
Findings
Scaled CP yields up to 19% higher IoU and 39% lower interval scores.
Class-wise calibration improves coverage with minimal impact on sharpness.
The method maintains coverage under distribution shift in autonomous driving datasets.
Abstract
Conformal Prediction (CP) is a distribution-free method for constructing prediction sets with marginal finite-sample coverage guarantees, making it a suitable framework for reliable uncertainty quantification in safety-critical object detection. However, object detection introduces structured multi-output predictions, complicating the application of classical CP theory developed for single outputs. In addition, standard, unscaled CP produces fixed-width prediction intervals across inputs, leading to unnecessary width for low-uncertainty predictions. While scaled CP addresses this by adapting the interval width to an input-dependent uncertainty estimate, prior work has neither systematically compared unscaled and scaled CP for multi-class object detection, nor integrated CP with a complementary uncertainty quantification method in this setting. We fill this gap by: (i) applying CP…
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