Deep probabilistic generative models have achieved incredible success in many fields of application. Among such models, variational autoencoders (VAEs) have proved their ability in modeling a generative process by learning a latent representation of the input. In this paper, we propose a novel VAE defined in the quaternion domain, which exploits the properties of quaternion algebra to improve performance while significantly reducing the number of parameters required by the network. The success of the proposed quaternion VAE with respect to traditional VAEs relies on the ability to leverage the internal relations between quaternion-valued input features and on the properties of second-order statistics which allow to define the latent variables in the augmented quaternion domain. In order to show the advantages due to such properties, we define a plain convolutional VAE in the quaternion domain and we evaluate its performance with respect to its real-valued counterpart on the CelebA face dataset.
翻译:在许多应用领域,深概率基因模型取得了令人难以置信的成功。在这些模型中,变式自动编码器(VAEs)通过学习输入的潜在代表方式,证明了它们建立基因化过程模型的能力。在本文件中,我们提议了四元域定义的新型VAE,它利用四元代数的特性来提高性能,同时大大减少网络所要求的参数数量。拟议的四元代数在传统的VAEs方面的成功取决于能否利用四元值输入特征之间的内部关系,以及第二序统计数据的特性,从而能够界定扩大的四元域的潜在变量。为了显示这些特性的好处,我们界定了四元域的普通革命性VAE,并评价其在CelebA面数据集上的实际价值对应方的性能。