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arxiv 1909.00676 v1 pith:BDQSUTZ5 submitted 2019-09-02 cs.CV

This is not what I imagined: Error Detection for Semantic Segmentation through Visual Dissimilarity

classification cs.CV
keywords segmentationsemanticdetectiondissimilaritygeneratedimagemethodout-of-distribution
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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There has been a remarkable progress in the accuracy of semantic segmentation due to the capabilities of deep learning. Unfortunately, these methods are not able to generalize much further than the distribution of their training data and fail to handle out-of-distribution classes appropriately. This limits the applicability to autonomous or safety critical systems. We propose a novel method leveraging generative models to detect wrongly segmented or out-of-distribution instances. Conditioned on the predicted semantic segmentation, an RGB image is generated. We then learn a dissimilarity metric that compares the generated image with the original input and detects inconsistencies introduced by the semantic segmentation. We present test cases for outlier and misclassification detection and evaluate our method qualitatively and quantitatively on multiple datasets.

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