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Deep Residual Flow for Out of Distribution Detection

Ev Zisselman, Aviv Tamar

202077 citationsDOI

Abstract

The effective application of neural networks in the real-world relies on proficiently detecting out-of-distribution examples. Contemporary methods seek to model the distribution of feature activations in the training data for adequately distinguishing abnormalities, and the state-of-the-art method uses Gaussian distribution models. In this work, we present a novel approach that improves upon the state-of-the-art by leveraging an expressive density model based on normalizing flows. We introduce the residual flow, a novel flow architecture that learns the residual distribution from a base Gaussian distribution. Our model is general, and can be applied to any data that is approximately Gaussian. For out of distribution detection in image datasets, our approach provides a principled improvement over the state-of-the-art. Specifically, we demonstrate the effectiveness of our method in ResNet and DenseNet architectures trained on various image datasets. For example, on a ResNet trained on CIFAR-100 and evaluated on detection of out-of-distribution samples from the ImageNet dataset, holding the true positive rate (TPR) at 95%, we improve the true negative rate (TNR) from 56.7% (current state of-the-art) to 77.5% (ours).

Topics & Concepts

ResidualComputer scienceGaussianResidual neural networkFeature (linguistics)Artificial intelligenceFeature extractionDistribution (mathematics)State (computer science)Artificial neural networkPattern recognition (psychology)Deep learningFlow (mathematics)Machine learningData miningAlgorithmMathematicsMathematical analysisGeometryQuantum mechanicsPhilosophyPhysicsLinguisticsAnomaly Detection Techniques and ApplicationsAdversarial Robustness in Machine LearningDomain Adaptation and Few-Shot Learning
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