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Systems and methods for coupled representation using transform learning for solving inverse problems

机译:使用变换学习来解决逆问题的耦合表示的系统和方法

摘要

This disclosure relates to systems and methods for solving generic inverse problems by providing a coupled representation architecture using transform learning. Convention solutions are complex, require long training and testing times, reconstruction quality also may not be suitable for all applications. Furthermore, they preclude application to real-time scenarios due to the mentioned inherent lacunae. The methods provided herein require involve very low computational complexity with a need for only three matrix-vector products, and requires very short training and testing times, which makes it applicable for real-time applications. Unlike the conventional learning architectures using inductive approaches, the CASC of the present disclosure can learn directly from the source domain and the number of features in a source domain may not be necessarily equal to the number of features in a target domain.
机译:本公开涉及通过提供使用转换学习的耦合表示架构来解决通用逆问题的系统和方法。 会议解决方案很复杂,需要长期训练和测试时间,重建质量也可能不适合所有应用。 此外,由于提到的固有的LECUNAE,它们迫切地应用于实时场景。 本文提供的方法需要涉及对仅需要三个矩阵 - 向量产品的计算复杂性,并且需要非常短的训练和测试时间,这使得它适用于实时应用。 与使用感应方法的传统学习架构不同,本公开的课程可以直接从源域学习,并且源域中的特征的数量可以不一定等于目标域中的特征数量。

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