High Order Tensor Formulation for Convolutional Sparse Coding

Adel Bibi, Bernard Ghanem
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引用次数: 22

Abstract

Convolutional sparse coding (CSC) has gained attention for its successful role as a reconstruction and a classification tool in the computer vision and machine learning community. Current CSC methods can only reconstruct singlefeature 2D images independently. However, learning multidimensional dictionaries and sparse codes for the reconstruction of multi-dimensional data is very important, as it examines correlations among all the data jointly. This provides more capacity for the learned dictionaries to better reconstruct data. In this paper, we propose a generic and novel formulation for the CSC problem that can handle an arbitrary order tensor of data. Backed with experimental results, our proposed formulation can not only tackle applications that are not possible with standard CSC solvers, including colored video reconstruction (5D- tensors), but it also performs favorably in reconstruction with much fewer parameters as compared to naive extensions of standard CSC to multiple features/channels.
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卷积稀疏编码的高阶张量公式
卷积稀疏编码(CSC)作为一种重建和分类工具在计算机视觉和机器学习领域获得了广泛的关注。目前的CSC方法只能独立地重建单一特征的二维图像。然而,学习多维字典和稀疏代码对于多维数据的重建是非常重要的,因为它共同检查了所有数据之间的相关性。这为学习到的字典提供了更大的容量来更好地重构数据。在本文中,我们提出了一个通用的、新颖的CSC问题的公式,它可以处理任意阶数据张量。在实验结果的支持下,我们提出的公式不仅可以解决标准CSC求解器无法解决的应用,包括彩色视频重建(5D张量),而且与标准CSC的幼稚扩展到多个特征/通道相比,它在参数少得多的重建中也表现良好。
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