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Classifier-Head Informed Feature Masking and Prototype-Based Logit Smoothing for Out-of-Distribution Detection

Zhuohao Sun, Yiqiao Qiu, Zhijun Tan, Wei‐Shi Zheng, Ruixuan Wang

2024IEEE Transactions on Circuits and Systems for Video Technology14 citationsDOI

Abstract

Out-of-distribution (OOD) detection is essential when deploying neural networks in the real world. One main challenge is that neural networks often make overconfident predictions on OOD data. In this study, we propose an effective post-hoc OOD detection method, named HIMPLoS, based on a new feature masking strategy and a novel logit smoothing strategy. Feature masking determines the important features at the penultimate layer for each in-distribution (ID) class based on the weights of the ID class in the classifier head and masks the rest features. Logit smoothing computes the cosine similarity between the feature vector of the test sample and the prototype of the predicted ID class at the penultimate layer and uses the similarity as an adaptive temperature factor on the logit to alleviate the network’s overconfidence prediction for OOD data. With these strategies, we can reduce feature activation of OOD data and enlarge the gap in OOD score between ID and OOD data. Extensive experiments on multiple standard OOD detection benchmarks demonstrate the effectiveness of our method and its compatibility with existing methods, with new state-of-the-art performance achieved from our method. The source code will be released publicly.

Topics & Concepts

Computer scienceSmoothingClassifier (UML)Artificial intelligencePattern recognition (psychology)Data miningArtificial neural networkMachine learningComputer visionAnomaly Detection Techniques and ApplicationsAdvanced Neural Network ApplicationsAdversarial Robustness in Machine Learning
Classifier-Head Informed Feature Masking and Prototype-Based Logit Smoothing for Out-of-Distribution Detection | Litcius