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A Deep Dictionary Model to Preserve and Disentangle Key Features in a Signal

机译:保留和解开信号中关键特征的深度字典模型

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We propose a deep dictionary model for single image super-resolution (SISR) made of multiple layers of analysis dictionaries interlaced with corresponding soft-thresholding operations and a single synthesis dictionary. In this paper, we introduce a novel method for learning analysis dictionary and thresholding pairs as building block for the deep dictionary model. Each analysis dictionary contains two sub-dictionaries: an information preserving analysis dictionary (IPAD) and a clustering analysis dictionary (CAD). The IPAD and thresholding pair passes the key information from the previous layer, while the CAD and thresholding pair gives a sparse representation of its input data that facilitates discrimination of key features. Simulation results show that the proposed deep dictionary model achieves comparable performance with a deep neural network which has the same structure and is optimized using backpropagation.
机译:我们为单个图像超分辨率(SISR)提出了一个深层字典模型,该模型由多层分析字典与相应的软阈值操作和单个合成字典交织而成。在本文中,我们介绍了一种用于学习分析字典和阈值对作为深度字典模型构建模块的新方法。每个分析词典包含两个子词典:信息保留分析词典(IPAD)和聚类分析词典(CAD)。 IPAD和阈值对传递来自上一层的关键信息,而CAD和阈值对则给出其输入数据的稀疏表示,这有助于区分关键特征。仿真结果表明,所提出的深度字典模型在具有相同结构并使用反向传播进行了优化的深度神经网络中达到了可比的性能。

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