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Structured Uncertainty Prediction Networks

机译:结构化不确定性预测网络

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摘要

This paper is the first work to propose a network to predict a structured uncertainty distribution for a synthesized image. Previous approaches have been mostly limited to predicting diagonal covariance matrices [15]. Our novel model learns to predict a full Gaussian covariance matrix for each reconstruction, which permits efficient sampling and likelihood evaluation. We demonstrate that our model can accurately reconstruct ground truth correlated residual distributions for synthetic datasets and generate plausible high frequency samples for real face images. We also illustrate the use of these predicted covariances for structure preserving image denoising.
机译:本文是提出网络预测合成图像结构化不确定性分布的第一项工作。先前的方法主要限于预测对角协方差矩阵[15]。我们的新颖模型学习为每次重构预测完整的高斯协方差矩阵,从而可以进行有效的采样和似然评估。我们证明了我们的模型可以为合成数据集准确地重建与地面真相相关的残差分布,并为真实的人脸图像生成合理的高频样本。我们还说明了将这些预测的协方差用于结构保留图像降噪的情况。

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