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Learning Resolution-independent Image Representations

机译:学习决议独立的图像表示

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摘要

Humans are well-known to be highly effective at comprehending continuous patterns within digital images. We present a collection of methods that enable analogous capabilities in deep neural networks. These methods train neural networks to represent images with continuous resolution-independent representations. They utilize an MCMC algorithm that directs attention during the learning phase to regions of the image that deviate from the current model. An encoding hypernetwork learns to generalize from a collection of images, such that it can effectively compute resolution-independent representations in constant time. These methods have immediate applications in super-resolution scaling of images, image compression, and secure image processing, and additionally suggest improved capabilities for image processing with neural networks in several future applications.
机译:众所周知,人类在理解数字图像中的连续模式方面是非常有效的。我们介绍了一系列方法,可以在深神经网络中实现类似的功能。这些方法训练神经网络以表示具有连续分辨率无关表示的图像。它们利用MCMC算法在学习阶段期间引导注意力到偏离当前模型的图像的区域。编码HyperNetwork学会从图像集合中概括,使得它可以在恒定的时间内有效地计算独立于分辨率的表示。这些方法在图像,图像压缩和安全图像处理的超分辨率缩放中具有立即应用,并且另外提出了在几种未来应用中使用神经网络的图像处理的改进能力。

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