Boosting Out-of-Distribution Image Detection With Epistemic Uncertainty

  • Oh, Dokwan
  • Ji, Daehyun
  • Kwon, Ohmin
  • Hyun, Yoonsuk
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초록

Modern deep neural networks are known to generate over-confident class predictions even for unseen samples. However, safety-critical applications are required to understand examples that differ from the training distribution. For example, an autonomous vehicle must return a instant refusal feedback when encountering an unexpected situation. The voice secretary should re-ask the user for a command that was not understood to prevent malfunction. In this paper, we propose an out-of-distribution sample detection algorithm using Uncertainty-based Additive Fast Gradient Sign Method (UA-FGSM), which uses Monte Carlo (MC) dropout during backpropagation. The proposed uncertainty-based method forces in-distribution sample predictions to be more over-confident and out-of-distribution sample predictions to be less over-confident in the pre-trained model. This boosts the discrimination between the in-distribution and out-of-distribution samples. In addition, we further boost this difference by continuously accumulating uncertainty-based gradients. Our method uses the inherent epistemic uncertainty of the pre-trained model. Therefore, the proposed algorithm does not require knowledge of the domain of the in-distribution dataset and works by simple pre-processing of the already trained model without any re-training. We demonstrate its effectiveness using diverse network architectures on various popular image datasets and noisy settings.

키워드

UncertaintyPerturbation methodsNeural networksTraining dataIterative methodsDetectorsAdditivesDeep learningSampling methodsDeep learningepistemic uncertaintyfast gradient sign methodout of distribution sample detection
제목
Boosting Out-of-Distribution Image Detection With Epistemic Uncertainty
저자
Oh, DokwanJi, DaehyunKwon, OhminHyun, Yoonsuk
DOI
10.1109/ACCESS.2022.3213667
발행일
2022
유형
Article
저널명
IEEE Access
10
페이지
109289 ~ 109298