2024
DOI: 10.3390/s24041248
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Dense Out-of-Distribution Detection by Robust Learning on Synthetic Negative Data

Matej Grcić,
Petra Bevandić,
Zoran Kalafatić
et al.

Abstract: Standard machine learning is unable to accommodate inputs which do not belong to the training distribution. The resulting models often give rise to confident incorrect predictions which may lead to devastating consequences. This problem is especially demanding in the context of dense prediction since input images may be only partially anomalous. Previous work has addressed dense out-of-distribution detection by discriminative training with respect to off-the-shelf negative datasets. However, real negative data… Show more

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Cited by 3 publications
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