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- Title
Uncertainty estimates for semantic segmentation: providing enhanced reliability for automated motor claims handling.
- Authors
Küchler, Jan; Kröll, Daniel; Schoenen, Sebastian; Witte, Andreas
- Abstract
Deep neural network models for image segmentation can be a powerful tool for the automation of motor claims handling processes in the insurance industry. A crucial aspect is the reliability of the model outputs when facing adverse conditions, such as low quality photos taken by claimants to document damages. We explore the use of a meta-classification model to empirically assess the precision of segments predicted by a model trained for the semantic segmentation of car body parts. Different sets of features correlated with the quality of a segment are compared, and an AUROC score of 0.915 is achieved for distinguishing between high- and low-quality segments. By removing low-quality segments, the average m IoU of the segmentation output is improved by 16 percentage points and the number of wrongly predicted segments is reduced by 77%.
- Publication
Machine Vision & Applications, 2024, Vol 35, Issue 4, p1
- ISSN
0932-8092
- Publication type
Article
- DOI
10.1007/s00138-024-01541-3