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Variational Autoencoded Regression: High Dimensional Regression of Visual Data on Complex Manifold

机译:变形自动化回归:复杂歧管上的视觉数据的高维回归

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摘要

This paper proposes a new high dimensional regression method by merging Gaussian process regression into a variational autoencoder framework. In contrast to other regression methods, the proposed method focuses on the case where output responses are on a complex high dimensional manifold, such as images. Our contributions are summarized as follows: (i) A new regression method estimating high dimensional image responses, which is not handled by existing regression algorithms, is proposed. (ii) The proposed regression method introduces a strategy to learn the latent space as well as the encoder and decoder so that the result of the regressed response in the latent space coincide with the corresponding response in the data space. (iii) The proposed regression is embedded into a generative model, and the whole procedure is developed by the variational autoencoder framework. We demonstrate the robustness and effectiveness of our method through a number of experiments on various visual data regression problems.
机译:本文通过将高斯进程回归合并到变分性AutoEncoder框架中提出了一种新的高维回归方法。与其他回归方法相比,所提出的方法侧重于输出响应在复杂的高维歧管(例如图像)上的情况。我们的贡献总结如下:(i)提出了一种新的回归方法,估计未通过现有回归算法处理的高维图像响应。 (ii)拟议的回归方法引入了学习潜在空间以及编码器和解码器的策略,使得潜在空间中回归响应的结果与数据空间中的相应响应一致。 (iii)将拟议的回归嵌入到生成模型中,并且整个过程由变形式自动化器框架开发。我们通过关于各种视觉数据回归问题的许多实验展示了我们方法的鲁棒性和有效性。

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