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Pré-publication, Document de travail

Unsupervised Layered Image Decomposition into Object Prototypes

Tom Monnier 1 Elliot Vincent 1, 2 Jean Ponce 2 Mathieu Aubry 1
2 WILLOW - Models of visual object recognition and scene understanding
Inria de Paris, DI-ENS - Département d'informatique de l'École normale supérieure
Abstract : We present an unsupervised learning framework for decomposing images into layers of automatically discovered object models. Contrary to recent approaches that model image layers with autoencoder networks, we represent them as explicit transformations of a small set of prototypical images. Our model has three main components: (i) a set of object prototypes in the form of learnable images with a transparency channel, which we refer to as sprites; (ii) differentiable parametric functions predicting occlusions and transformation parameters necessary to instantiate the sprites in a given image; (iii) a layered image formation model with occlusion for compositing these instances into complete images including background. By jointly learning the sprites and occlusion/transformation predictors to reconstruct images, our approach not only yields accurate layered image decompositions, but also identifies object categories and instance parameters. We first validate our approach by providing results on par with the state of the art on standard multi-object synthetic benchmarks (Tetrominoes, Multi-dSprites, CLEVR6). We then demonstrate the applicability of our model to real images in tasks that include clustering (SVHN, GTSRB), cosegmentation (Weizmann Horse) and object discovery from unfiltered social network images. To the best of our knowledge, our approach is the first layered image decomposition algorithm that learns an explicit and shared concept of object type, and is robust enough to be applied to real images.
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Pré-publication, Document de travail
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https://hal.archives-ouvertes.fr/hal-03216019
Contributeur : Tom Monnier <>
Soumis le : lundi 3 mai 2021 - 16:39:34
Dernière modification le : jeudi 13 mai 2021 - 14:03:57

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  • HAL Id : hal-03216019, version 1
  • ARXIV : 2104.14575

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Tom Monnier, Elliot Vincent, Jean Ponce, Mathieu Aubry. Unsupervised Layered Image Decomposition into Object Prototypes. 2021. ⟨hal-03216019⟩

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