TenSR: Multi-dimensional Tensor Sparse Representation

Na Qi, Yunhui Shi, Xiaoyan Sun, Baocai Yin
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引用次数: 41

Abstract

The conventional sparse model relies on data representation in the form of vectors. It represents the vector-valued or vectorized one dimensional (1D) version of an signal as a highly sparse linear combination of basis atoms from a large dictionary. The 1D modeling, though simple, ignores the inherent structure and breaks the local correlation inside multidimensional (MD) signals. It also dramatically increases the demand of memory as well as computational resources especially when dealing with high dimensional signals. In this paper, we propose a new sparse model TenSR based on tensor for MD data representation along with the corresponding MD sparse coding and MD dictionary learning algorithms. The proposed TenSR model is able to well approximate the structure in each mode inherent in MD signals with a series of adaptive separable structure dictionaries via dictionary learning. The proposed MD sparse coding algorithm by proximal method further reduces the computational cost significantly. Experimental results with real world MD signals, i.e. 3D Multi-spectral images, show the proposed TenSR greatly reduces both the computational and memory costs with competitive performance in comparison with the state-of-the-art sparse representation methods. We believe our proposed TenSR model is a promising way to empower the sparse representation especially for large scale high order signals.
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TenSR:多维张量稀疏表示
传统的稀疏模型依赖于以向量形式表示的数据。它将信号的向量值或向量化的一维(1D)版本表示为来自大字典的基原子的高度稀疏线性组合。一维建模虽然简单,但忽略了信号的固有结构,破坏了多维信号内部的局部相关性。它还极大地增加了对内存和计算资源的需求,特别是在处理高维信号时。本文提出了一种新的基于张量的MD数据表示稀疏模型TenSR,并给出了相应的MD稀疏编码和MD字典学习算法。该模型通过字典学习,利用一系列自适应可分离结构字典,能够很好地逼近MD信号中各模态的固有结构。本文提出的基于近邻法的MD稀疏编码算法进一步显著降低了计算量。对真实MD信号(即3D多光谱图像)的实验结果表明,与目前最先进的稀疏表示方法相比,所提出的TenSR大大降低了计算和存储成本,并具有竞争力的性能。我们相信我们提出的TenSR模型是一种很有前途的方法来增强稀疏表示,特别是对于大规模的高阶信号。
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