Kronecker压缩感知的自适应稀疏表示

Rongqiang Zhao, Qiang Wang, Xiang Ma, Z. Qian
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引用次数: 1

摘要

Kronecker压缩感知(KCS)技术用于对多维信号进行压缩采样,并根据其测量值进行重构。为了获得更精确的重构,通常使用学习到的字典对原始信号进行基于塔克分解的稀疏表示。这种字典是通过使用一组包含与原始信号相似结构的多维训练样本来提前学习的。然而,原始信号的先验信息可能是事先未知的。在这种情况下,选择合适的样本进行字典学习是不可行的。为了克服这一限制,本文提出了一种自适应的KCS稀疏表示方法。该方法在不需要原始信号先验信息的情况下实现了字典的动态更新。结果表明,随着输入信号数量的增加,重构精度不断提高,并通过对真实图像的仿真验证了这一点。
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Adaptive Sparse Representation for Kronecker Compressive Sensing
Kronecker compressive sensing (KCS) technique is used for compressively sampling multi-dimensional signals, and reconstructing them from their measurements. In order to obtain more accurate reconstruction, the learned dictionaries are usually employed for Tucker-decomposition-based sparse representation of original signals. Such dictionaries are learned in advance by using a set of multi-dimensional training samples which contain similar structures with the original signals. However, the prior information of the original signals may be unknown in advance. In such case, it is infeasible to select proper samples for dictionary learning. To overcome this limitation, in this paper, we propose an adaptive approach for sparse representation of KCS. The proposed approach achieves dynamic update of dictionaries without requiring the prior information of original signals. As a result, the reconstruction accuracy can be continually improved as the number of input signals increases, which is verified through the simulations on real images.
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