group equivariant capsule network
Group Equivariant Capsule Networks
We present group equivariant capsule networks, a framework to introduce guaranteed equivariance and invariance properties to the capsule network idea. Our work can be divided into two contributions. First, we present a generic routing by agreement algorithm defined on elements of a group and prove that equivariance of output pose vectors, as well as invariance of output activations, hold under certain conditions. Second, we connect the resulting equivariant capsule networks with work from the field of group convolutional networks. Through this connection, we provide intuitions of how both methods relate and are able to combine the strengths of both approaches in one deep neural network architecture. The resulting framework allows sparse evaluation of the group convolution operator, provides control over specific equivariance and invariance properties, and can use routing by agreement instead of pooling operations. In addition, it is able to provide interpretable and equivariant representation vectors as output capsules, which disentangle evidence of object existence from its pose.
Reviews: Group Equivariant Capsule Networks
Authors present a modification of Capsule networks which guarantees equivarience to SO(2) group of transformations. Since restricting the pose matrices of a capsule network to operate inside the group degrades the performance of the network, they also suggest a method for combining group convolutional layers with capsule layers. Although the theoretical aspect of this work is strong, but experimental evaluations are quite limited without a proper comparison to baselines andc other works. Pros: The paper is well written and conveys the idea clearly. Capsule networks were proposed initially with the promise of better generalization in terms of affine transformations and viewpoint invarience.
Group Equivariant Capsule Networks
Lenssen, Jan Eric, Fey, Matthias, Libuschewski, Pascal
We present group equivariant capsule networks, a framework to introduce guaranteed equivariance and invariance properties to the capsule network idea. Our work can be divided into two contributions. First, we present a generic routing by agreement algorithm defined on elements of a group and prove that equivariance of output pose vectors, as well as invariance of output activations, hold under certain conditions. Second, we connect the resulting equivariant capsule networks with work from the field of group convolutional networks. Through this connection, we provide intuitions of how both methods relate and are able to combine the strengths of both approaches in one deep neural network architecture.
r/MachineLearning - [R][1806.05086] Group Equivariant Capsule Networks
Abstract: We present group equivariant capsule networks, a framework to introduce guaranteed equivariance and invariance properties to the capsule network idea. Our work can be divided into two contributions. First, we present a generic routing by agreement algorithm defined on elements of a group and prove that equivariance of output pose vectors, as well as invariance of output activations, hold under certain conditions. Second, we connect the resulting equivariant capsule networks with work from the field of group convolutional networks. Through this connection, we provide intuitions of how both methods relate and are able to combine the strengths of both approaches in one deep neural network architecture.