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Integrating Statistical Prior Knowledge into Convolutional Neural Networks

机译:将统计先验知识整合到卷积神经网络中

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In this work we show how to integrate prior statistical knowledge, obtained through principal components analysis (PCA), into a convolutional neural network in order to obtain robust predictions even when dealing with corrupted or noisy data. Our network architecture is trained end-to-end and includes a specifically designed layer which incorporates the dataset modes of variation discovered via PCA and produces predictions by linearly combining them. We also propose a mechanism to focus the attention of the CNN on specific regions of interest of the image in order to obtain refined predictions. We show that our method is effective in challenging segmentation and landmark localization tasks.
机译:在这项工作中,我们展示了如何将通过主成分分析(PCA)获得的先验统计知识整合到卷积神经网络中,以便即使在处理损坏或嘈杂的数据时也能获得可靠的预测。我们的网络体系结构经过端到端培训,并包括经过特殊设计的层,该层包含通过PCA发现的数据集变化模式并通过线性组合它们来产生预测。我们还提出了一种机制,将CNN的注意力集中在图像的特定感兴趣区域上,以获得精确的预测。我们证明了我们的方法在挑战性分割和界标定位任务中是有效的。

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