Ladder capsule network

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We propose a new architecture of the capsule network called the ladder capsule network, which has an alternative building block to the dynamic routing algorithm in the capsule network (Sabour et al., 2017). Motivated by the need for using only important capsules during training for robust performance, we first introduce a new layer called the pruning layer, which removes irrelevant capsules. Based on the selected capsules, wc construct higher-level capsule outputs. Subsequently, to capture the part-whole spatial relationships, we introduce another new layer called the ladder layer, the outputs of which are regressed lower-level capsule outputs from higher-level capsules. Unlike the capsule network adopting the routing-by-agreement, the ladder capsule network uses backpropagation from a loss function to reconstruct the lower-level capsule outputs from higher-level capsules; thus, the ladder layer implements the reverse directional inference of the agreement/disagreement mechanism of the capsule network. The experiments on MNIST demonstrate that the ladder capsule network leams an equivariant representation and improves the capability to extrapolate or generalize to pose variations.
Publisher
International Machine Learning Society (IMLS)
Issue Date
2019-06
Language
English
Citation

36th International Conference on Machine Learning, ICML 2019, pp.5417 - 5425

URI
http://hdl.handle.net/10203/273635
Appears in Collection
IE-Conference Papers(학술회의논문)
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