Reconstruction-based Out-of-Distribution Detection for Short-Range FMCW
Radar
- URL: http://arxiv.org/abs/2302.14192v2
- Date: Thu, 15 Jun 2023 09:26:42 GMT
- Title: Reconstruction-based Out-of-Distribution Detection for Short-Range FMCW
Radar
- Authors: Sabri Mustafa Kahya, Muhammet Sami Yavuz, Eckehard Steinbach
- Abstract summary: We propose a novel reconstruction-based OOD detector to operate on the radar domain.
Our method exploits an autoencoder (AE) and its latent representation to detect the OOD samples.
We achieve an AUROC of 90.72% on our dataset collected by using 60 GHz short-range FMCW Radar.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Out-of-distribution (OOD) detection recently has drawn attention due to its
critical role in the safe deployment of modern neural network architectures in
real-world applications. The OOD detectors aim to distinguish samples that lie
outside the training distribution in order to avoid the overconfident
predictions of machine learning models on OOD data. Existing detectors, which
mainly rely on the logit, intermediate feature space, softmax score, or
reconstruction loss, manage to produce promising results. However, most of
these methods are developed for the image domain. In this study, we propose a
novel reconstruction-based OOD detector to operate on the radar domain. Our
method exploits an autoencoder (AE) and its latent representation to detect the
OOD samples. We propose two scores incorporating the patch-based reconstruction
loss and the energy value calculated from the latent representations of each
patch. We achieve an AUROC of 90.72% on our dataset collected by using 60 GHz
short-range FMCW Radar. The experiments demonstrate that, in terms of AUROC and
AUPR, our method outperforms the baseline (AE) and the other state-of-the-art
methods. Also, thanks to its model size of 641 kB, our detector is suitable for
embedded usage.
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