Uncertainty-aware Cross-Entropy for Semantic Segmentation
Steven Landgraf,
Markus Hillemann,
Kira Wursthorn
et al.
Abstract:Abstract. Deep neural networks have shown exceptional performance in various tasks, but their lack of robustness, reliability, and tendency to be overconfident pose challenges for their deployment in safety-critical applications like autonomous driving. In this regard, quantifying the uncertainty inherent to a model’s prediction is a promising endeavour to address these shortcomings. In this work, we present a novel Uncertainty-aware Cross-Entropy loss (U-CE) that incorporates dynamic predictive uncertainties … Show more
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