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Unsupervised orientation learning using autoencoders

Rembert Daems (UGent) and Francis wyffels (UGent)
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Abstract
We present a method to learn the orientation of symmetric objects in real-world images in an unsupervised way. Our method explicitly maps in-plane relative rotations to the latent space of an autoencoder, by rotating both in the image domain and latent domain. This is achieved by adding a proposed \textit{crossing loss} to a standard autoencoder training framework which enforces consistency between the image domain and latent domain rotations. This relative representation of rotation is made absolute, by using the symmetry of the observed object, resulting in an unsupervised method to learn the orientation. Furthermore, orientation is disentangled in latent space from other descriptive factors. We apply this method on two real-world datasets: aerial images of planes in the DOTA dataset and images of densely packed honeybees. We empirically show this method can learn orientation using no annotations with high accuracy compared to the same models trained with annotations.

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MLA
Daems, Rembert, and Francis wyffels. “Unsupervised Orientation Learning Using Autoencoders.” NeurIPS 2020 DiffGeo4DL Workshop, 2020.
APA
Daems, R., & wyffels, F. (2020). Unsupervised orientation learning using autoencoders. NeurIPS 2020 DiffGeo4DL Workshop. Presented at the NeurIPS 2020 Workshop : Differential Geometry meets Deep Learning (DiffGeo4DL), Online.
Chicago author-date
Daems, Rembert, and Francis wyffels. 2020. “Unsupervised Orientation Learning Using Autoencoders.” In NeurIPS 2020 DiffGeo4DL Workshop.
Chicago author-date (all authors)
Daems, Rembert, and Francis wyffels. 2020. “Unsupervised Orientation Learning Using Autoencoders.” In NeurIPS 2020 DiffGeo4DL Workshop.
Vancouver
1.
Daems R, wyffels F. Unsupervised orientation learning using autoencoders. In: NeurIPS 2020 DiffGeo4DL Workshop. 2020.
IEEE
[1]
R. Daems and F. wyffels, “Unsupervised orientation learning using autoencoders,” in NeurIPS 2020 DiffGeo4DL Workshop, Online, 2020.
@inproceedings{8683423,
  abstract     = {{We present a method to learn the orientation of symmetric objects in real-world images in an unsupervised way. Our method explicitly maps in-plane relative rotations to the latent space of an autoencoder, by rotating both in the image domain and latent domain. This is achieved by adding a proposed \textit{crossing loss} to a standard autoencoder training framework which enforces consistency between the image domain and latent domain rotations. This relative representation of rotation is made absolute, by using the symmetry of the observed object, resulting in an unsupervised method to learn the orientation. Furthermore, orientation is disentangled in latent space from other descriptive factors. We apply this method on two real-world datasets: aerial images of planes in the DOTA dataset and images of densely packed honeybees. We empirically show this method can learn orientation using no annotations with high accuracy compared to the same models trained with annotations.}},
  author       = {{Daems, Rembert and wyffels, Francis}},
  booktitle    = {{NeurIPS 2020 DiffGeo4DL Workshop}},
  language     = {{eng}},
  location     = {{Online}},
  pages        = {{8}},
  title        = {{Unsupervised orientation learning using autoencoders}},
  url          = {{https://nips.cc/Conferences/2020/ScheduleMultitrack?event=16116}},
  year         = {{2020}},
}