利用非单调算子进行局部单调算子学习MnM-MOL

IF 4.2 2区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Maneesh John;Jyothi Rikhab Chand;Mathews Jacob
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引用次数: 0

摘要

从欠采样测量中恢复磁共振(MR)图像是近年来广泛研究的一个关键问题。在迭代重建算法中,依赖于卷积神经网络(CNN)块端到端训练的非滚动方法具有最先进的性能。这些算法在训练过程中需要大量内存,因此难以用于高维应用。深度平衡(DEQ)模型和最近推出的单调算子学习(MOL)方法无需展开,从而减少了训练过程中的内存需求。这两种方法都需要对网络进行 Lipschitz 约束,以确保前向和反向传播迭代收敛。遗憾的是,与未卷积方法相比,该约束往往会导致性能下降。这项工作的重点是以两种不同的方式放松对 CNN 块的约束。受凸-非凸正则化策略的启发,我们现在对数据项和 CNN 块的梯度之和施加单调约束,而不是将 CNN 本身约束为单调算子。这种方法能让 CNN 学习可能非单调的分数函数,从而提高性能。此外,我们只限制算子在图像流形周围的局部邻域内是单调的。我们的理论结果表明,只要初始化接近真实解,所提出的算法就能保证收敛到固定点,并且解对输入扰动具有鲁棒性。我们的实证结果表明,放宽的约束条件提高了算法的性能,而且该方法对输入扰动的鲁棒性与 MOL 相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Monotone Operator Learning Using Non-Monotone Operators: MnM-MOL
The recovery of magnetic resonance (MR) images from undersampled measurements is a key problem that has been the subject of extensive research in recent years. Unrolled approaches, which rely on end-to-end training of convolutional neural network (CNN) blocks within iterative reconstruction algorithms, offer state-of-the-art performance. These algorithms require a large amount of memory during training, making them difficult to employ in high-dimensional applications. Deep equilibrium (DEQ) models and the recent monotone operator learning (MOL) approach were introduced to eliminate the need for unrolling, thus reducing the memory demand during training. Both approaches require a Lipschitz constraint on the network to ensure that the forward and backpropagation iterations converge. Unfortunately, the constraint often results in reduced performance compared to the unrolled methods. The main focus of this work is to relax the constraint on the CNN block in two different ways. Inspired by convex-non-convex regularization strategies, we now impose the monotone constraint on the sum of the gradient of the data term and the CNN block, rather than constrain the CNN itself to be a monotone operator. This approach enables the CNN to learn possibly non-monotone score functions, which can translate to improved performance. In addition, we only restrict the operator to be monotone in a local neighborhood around the image manifold. Our theoretical results show that the proposed algorithm is guaranteed to converge to the fixed point and that the solution is robust to input perturbations, provided that it is initialized close to the true solution. Our empirical results show that the relaxed constraints translate to improved performance and that the approach enjoys robustness to input perturbations similar to MOL.
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来源期刊
IEEE Transactions on Computational Imaging
IEEE Transactions on Computational Imaging Mathematics-Computational Mathematics
CiteScore
8.20
自引率
7.40%
发文量
59
期刊介绍: The IEEE Transactions on Computational Imaging will publish articles where computation plays an integral role in the image formation process. Papers will cover all areas of computational imaging ranging from fundamental theoretical methods to the latest innovative computational imaging system designs. Topics of interest will include advanced algorithms and mathematical techniques, model-based data inversion, methods for image and signal recovery from sparse and incomplete data, techniques for non-traditional sensing of image data, methods for dynamic information acquisition and extraction from imaging sensors, software and hardware for efficient computation in imaging systems, and highly novel imaging system design.
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