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Coupled Analysis Dictionary Learning to inductively learn inversion: Application to real-time reconstruction of Biomedical signals

机译:耦合分析词典学习归纳地学习反演:应用于生物医学信号的实时重建

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This work addresses the problem of reconstructing biomedical signals from their lower dimensional projections. Traditionally Compressed Sensing (CS) based techniques have been employed for this task. These are transductive inversion processes; the problem with these approaches is that the inversion is time-consuming and hence not suitable for real-time applications. With the recent advent of deep learning, Stacked Sparse Denoising Autoencoder (SSDAE) has been used for learning inversion in an inductive setup. The training period for inductive learning is large but is very fast during application - capable of real-time speed. This work proposes a new approach for inductive learning of the inversion process. It is based on Coupled Analysis Dictionary Learning. Results on Biomedical signal reconstruction show that our proposed approach is very fast and yields result far better than CS and SSDAE.
机译:这项工作解决了从其较低尺寸投影重建生物医学信号的问题。已经采用了传统的压缩传感(CS)技术为此任务。这些是转换反转过程;这些方法的问题是反转是耗时的,因此不适合实时应用。随着近期深度学习的出现,堆叠稀疏的稀疏性AutoEncoder(SSDAE)已被用于归纳设置中的学习反演。诱导学习的培训期很大,但在应用过程中非常快,能够实时速度。这项工作提出了一种归纳归纳过程的新方法。它基于耦合分析字典学习。结果生物医学信号重建表明,我们所提出的方法非常快,结果远远优于CS和SSDAE。

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