Iterative energy-based projection on a normal data manifold for anomaly
localization
- URL: http://arxiv.org/abs/2002.03734v1
- Date: Mon, 10 Feb 2020 13:35:41 GMT
- Title: Iterative energy-based projection on a normal data manifold for anomaly
localization
- Authors: David Dehaene, Oriel Frigo, S\'ebastien Combrexelle, Pierre Eline
- Abstract summary: We propose a new approach for projecting anomalous data on a autoencoder-learned normal data manifold.
By iteratively updating the input of the autoencoder, we bypass the loss of high-frequency information caused by the autoencoder bottleneck.
- Score: 3.785123406103385
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Autoencoder reconstructions are widely used for the task of unsupervised
anomaly localization. Indeed, an autoencoder trained on normal data is expected
to only be able to reconstruct normal features of the data, allowing the
segmentation of anomalous pixels in an image via a simple comparison between
the image and its autoencoder reconstruction. In practice however, local
defects added to a normal image can deteriorate the whole reconstruction,
making this segmentation challenging. To tackle the issue, we propose in this
paper a new approach for projecting anomalous data on a autoencoder-learned
normal data manifold, by using gradient descent on an energy derived from the
autoencoder's loss function. This energy can be augmented with regularization
terms that model priors on what constitutes the user-defined optimal
projection. By iteratively updating the input of the autoencoder, we bypass the
loss of high-frequency information caused by the autoencoder bottleneck. This
allows to produce images of higher quality than classic reconstructions. Our
method achieves state-of-the-art results on various anomaly localization
datasets. It also shows promising results at an inpainting task on the CelebA
dataset.
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