论文标题

检查胶囊神经网络的好处

Examining the Benefits of Capsule Neural Networks

论文作者

Punjabi, Arjun, Schmid, Jonas, Katsaggelos, Aggelos K.

论文摘要

胶囊网络是最近开发的神经网络类别,可能会通过传统的卷积神经网络解决一些缺陷。通过用向量替换标准标量激活,并以新的方式连接人造神经元,胶囊网络的目标是成为计算机视觉应用的下一个伟大开发。但是,为了确定这些网络的真正运行方式与传统网络的运作是否不同,必须查看胶囊特征的差异。为此,我们进行了多项分析,目的是阐明胶囊特征,并确定它们是否按照初始出版物中所述执行。首先,我们进行深度可视化分析,以在视觉上比较胶囊特征和卷积神经网络特征。然后,我们查看胶囊功能可以在矢量组件上编码信息的能力,并解决胶囊体系结构中的更改提供了最大的好处。最后,我们研究了胶囊特征能够通过视觉转换来编码类对象的实例化参数。

Capsule networks are a recently developed class of neural networks that potentially address some of the deficiencies with traditional convolutional neural networks. By replacing the standard scalar activations with vectors, and by connecting the artificial neurons in a new way, capsule networks aim to be the next great development for computer vision applications. However, in order to determine whether these networks truly operate differently than traditional networks, one must look at the differences in the capsule features. To this end, we perform several analyses with the purpose of elucidating capsule features and determining whether they perform as described in the initial publication. First, we perform a deep visualization analysis to visually compare capsule features and convolutional neural network features. Then, we look at the ability for capsule features to encode information across the vector components and address what changes in the capsule architecture provides the most benefit. Finally, we look at how well the capsule features are able to encode instantiation parameters of class objects via visual transformations.

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