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LEARNING LOSS FUNCTIONS USING DEEP LEARNING NETWORKS

机译:使用深度学习网络的学习损失函数

摘要

Techniques are provided for learning loss functions using DL networks and integrating these loss functions into DL based image transformation architectures. In one embodiment, a method is provided that comprising facilitating training, by a system operatively coupled to a processor, a first deep learning network to predict a loss function metric value of a loss function. The method further comprises employing, by the system, the first deep learning network to predict the loss function metric value in association with training a second deep learning network that to perform a defined deep learning task. In various embodiments, the loss function comprises a computationally complex loss function that is not easily implementable in existing deep learning packages, such as a non-differentiable loss function, a feature similarity index match (FSIM) loss function, a system transfer function, a visual information fidelity (VIF) loss function and the like.
机译:使用DL网络提供学习损失功能的技术,并将这些损耗功能集成到基于DL的图像变换架构中。 在一个实施例中,提供了一种方法,该方法包括促进训练,通过可操作地耦合到处理器的系统,第一深度学习网络来预测损耗功能的损耗功能度量值。 该方法还包括通过系统,由第一深度学习网络采用,以预测与训练执行定义的深度学习任务的第二深度学习网络的训练功能度量值。 在各种实施例中,损耗函数包括计算复杂的损耗功能,该损耗功能不易实现,例如非可分子损耗函数,特征相似性索引匹配(FSIM)丢失功能,系统传输函数,a Visual Information Fidelity(VIF)丢失功能等。

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