GAN Based Boundary Aware Classifier for Detecting Out-of-distribution
Samples
- URL: http://arxiv.org/abs/2112.11648v1
- Date: Wed, 22 Dec 2021 03:35:54 GMT
- Title: GAN Based Boundary Aware Classifier for Detecting Out-of-distribution
Samples
- Authors: Sen Pei, Xin Zhang, Richard YiDa Xu and Gaofeng Meng
- Abstract summary: We propose a GAN based boundary aware classifier (GBAC) for generating a closed hyperspace which only contains most id data.
Our method is based on the fact that the traditional neural net seperates the feature space as several unclosed regions which are not suitable for ood detection.
With GBAC as an auxiliary module, the ood data distributed outside the closed hyperspace will be assigned with much lower score, allowing more effective ood detection.
- Score: 24.572516991009323
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper focuses on the problem of detecting out-of-distribution (ood)
samples with neural nets. In image recognition tasks, the trained classifier
often gives high confidence score for input images which are remote from the
in-distribution (id) data, and this has greatly limited its application in real
world. For alleviating this problem, we propose a GAN based boundary aware
classifier (GBAC) for generating a closed hyperspace which only contains most
id data. Our method is based on the fact that the traditional neural net
seperates the feature space as several unclosed regions which are not suitable
for ood detection. With GBAC as an auxiliary module, the ood data distributed
outside the closed hyperspace will be assigned with much lower score, allowing
more effective ood detection while maintaining the classification performance.
Moreover, we present a fast sampling method for generating hard ood
representations which lie on the boundary of pre-mentioned closed hyperspace.
Experiments taken on several datasets and neural net architectures promise the
effectiveness of GBAC.
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