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DenseHybrid: Hybrid Anomaly Detection for Dense Open-Set Recognition (CROSBI ID 728954)

Prilog sa skupa u časopisu | izvorni znanstveni rad | međunarodna recenzija

Grcić, Matej ; Bevandić, Petra ; Šegvić, Siniša DenseHybrid: Hybrid Anomaly Detection for Dense Open-Set Recognition // Lecture notes in computer science. 2022. str. 500-517 doi: 10.1007/978-3-031-19806-9_29

Podaci o odgovornosti

Grcić, Matej ; Bevandić, Petra ; Šegvić, Siniša

engleski

DenseHybrid: Hybrid Anomaly Detection for Dense Open-Set Recognition

Anomaly detection can be conceived either through generative modelling of regular training data or by discriminating with respect to negative training data. These two approaches exhibit different failure modes. Consequently, hybrid algorithms present an attractive research goal. Unfortunately, dense anomaly detection requires translational equivariance and very large input resolutions. These requirements disqualify all previous hybrid approaches to the best of our knowledge. We therefore design a novel hybrid algorithm based on reinterpreting discriminative logits as a logarithm of the unnormalized joint distribution ˆp(x, y). Our model builds on a shared convolutional representation from which we recover three dense predictions: i) the closed-set class posterior P(y|x), ii) the dataset posterior P(din|x), iii) unnormalized data likelihood ˆp(x). The latter two predictions are trained both on the standard training data and on a generic negative dataset. We blend these two predictions into a hybrid anomaly score which allows dense open-set recognition on large natural images. We carefully design a custom loss for the data likelihood in order to avoid backpropagation through the untractable normalizing constant Z(θ). Experiments evaluate our contributions on standard dense anomaly detection benchmarks as well as in terms of open-mIoU - a novel metric for dense open-set performance. Our submissions achieve state-of-the-art performance despite neglectable computational overhead over the standard semantic segmentation baseline. Official implementation: https://github.com/matejgrcic/DenseHybrid

Dense anomaly detection, Dense open-set recognition, Out-of-distribution detection, Semantic segmentation

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Podaci o prilogu

500-517.

2022.

nije evidentirano

objavljeno

10.1007/978-3-031-19806-9_29

Podaci o matičnoj publikaciji

Lecture notes in computer science

Springer

0302-9743

Podaci o skupu

17th European Conference on Computer Vision (ECCV 2022)

poster

23.10.2022-27.10.2022

Tel Aviv, Izrael

Povezanost rada

Računarstvo

Poveznice
Indeksiranost