FasTrCaps: An Integrated Framework for Fast yet Accurate Training of Capsule Networks.

Published: May 24, 2019
Abstract
Recently, Capsule Networks (CapsNets) have shown improved performance compared to the traditional Convolutional Neural Networks (CNNs), by encoding and preserving spatial relationships between the detected features in a better way. This is achieved through the so-called Capsules (i.e., groups of neurons) that encode both the instantiation probability and the spatial information. However, one of the major hurdles in the wide adoption of CapsNets...
Paper Details
Title
FasTrCaps: An Integrated Framework for Fast yet Accurate Training of Capsule Networks.
Published Date
May 24, 2019
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