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Disentangling Latent Factors of Variational Auto-encoder with Whitening

机译:变白变分自动编码器的潜在因素

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After deep generative models were successfully applied to image generation tasks, learning disentangled latent variables of data has become a crucial part of deep generative model research. Many models have been proposed to learn an interpretable and factorized representation of latent variable by modifying their objective function or model architecture. To disentangle the latent variable, some models show lower quality of reconstructed images and others increase the model complexity which is hard to train. In this paper, we propose a simple disentangling method based on a traditional whitening process. The proposed method is applied to the latent variables of variational auto-encoder (VAE), although it can be applied to any generative models with latent variables. In experiment, we apply the proposed method to simple VAE models and experiment results confirm that our method finds more interpretable factors from the latent space while keeping the reconstruction error the same as the conventional VAE's error.
机译:在将深度生成模型成功应用于图像生成任务之后,学习数据的纠缠的潜在变量已成为深度生成模型研究的关键部分。已经提出了许多模型,以通过修改其目标函数或模型体系结构来学习潜在变量的可解释和因式表示。为了解开潜在变量,某些模型显示了较低质量的重建图像,而另一些模型则增加了模型的复杂性,难以训练。在本文中,我们提出了一种基于传统美白工艺的简单解缠方法。尽管可以将其应用于具有潜在变量的任何生成模型,但该方法仍适用于变分自动编码器(VAE)的潜在变量。在实验中,我们将该方法应用于简单的VAE模型,实验结果证实,该方法从潜在空间中发现了更多可解释的因素,同时使重构误差与常规VAE的误差相同。

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