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Calibrating Uncertainties in Object Localization Task

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arxiv 1811.11210 v1 pith:X4G5WX5H submitted 2018-11-27 cs.LG stat.ML

Calibrating Uncertainties in Object Localization Task

classification cs.LG stat.ML
keywords objectboundingcalibratingestimateestimateslocalizationmethodsmodules
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In many safety-critical applications such as autonomous driving and surgical robots, it is desirable to obtain prediction uncertainties from object detection modules to help support safe decision-making. Specifically, such modules need to estimate the probability of each predicted object in a given region and the confidence interval for its bounding box. While recent Bayesian deep learning methods provide a principled way to estimate this uncertainty, the estimates for the bounding boxes obtained using these methods are uncalibrated. In this paper, we address this problem for the single-object localization task by adapting an existing technique for calibrating regression models. We show, experimentally, that the resulting calibrated model obtains more reliable uncertainty estimates.

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