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Accurate and Efficient Matrix Completion Using Cascaded Deep Neural Network

机译:使用级联深神经网络完成准确和有效的矩阵完成

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The matrix completion problem, which recover the missing data from the observed ones, had been widely studied in recent years. Although deep learning techniques had been applied in varies fields, limited works had done on matrix recovery. In this paper, we proposed a new deep neural network (DNN) model by integrating optimization theory and deep learning technique to solve the matrix completion problem. A cascaded neural network that contains the idea of alternating optimization is trained, and the application of SAR data reconstruction and imaging is used for evaluation. Experimental results shown that the proposed model can achieve better performance with less computational complexity when the sampling rate is sufficiently low.
机译:近年来,从观察到的数据中恢复缺失数据的矩阵完工问题已被广泛研究。 虽然在各种各样的领域应用了深度学习技术,但有限的作品已经完成了矩阵恢复。 本文通过集成优化理论和深度学习技术来解决矩阵完成问题,提出了一种新的深度神经网络(DNN)模型。 培训包含交替优化思想的级联神经网络,并且SAR数据重建和成像的应用用于评估。 实验结果表明,当采样率足够低时,所提出的模型可以通过较少的计算复杂性实现更好的性能。

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