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Poster

Stacked Capsule Autoencoders

Adam Kosiorek · Sara Sabour · Yee Whye Teh · Geoffrey E Hinton

East Exhibition Hall B + C #36

Keywords: [ Atte ] [ Algorithms -> Unsupervised Learning; Applications -> Computer Vision; Applications -> Object Recognition; Deep Learning ] [ Algorithms ] [ Representation Learning ]


Abstract:

Objects are composed of a set of geometrically organized parts. We introduce an unsupervised capsule autoencoder (SCAE), which explicitly uses geometric relationships between parts to reason about objects. Since these relationships do not depend on the viewpoint, our model is robust to viewpoint changes. SCAE consists of two stages. In the first stage, the model predicts presences and poses of part templates directly from the image and tries to reconstruct the image by appropriately arranging the templates. In the second stage, the SCAE predicts parameters of a few object capsules, which are then used to reconstruct part poses. Inference in this model is amortized and performed by off-the-shelf neural encoders, unlike in previous capsule networks. We find that object capsule presences are highly informative of the object class, which leads to state-of-the-art results for unsupervised classification on SVHN (55%) and MNIST (98.7%).

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