A Matrix-Valued Inner Product for Matrix-Valued Signals and Matrix-Valued Lattices

X. Xia
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Abstract

A matrix-valued inner product was proposed before to construct orthonormal matrix-valued wavelets for matrix-valued signals. It introduces a weaker orthogonality for matrix-valued signals than the orthogonality of all components in a matrix that is commonly used in orthogonal multiwavelet constructions. With the weaker orthogonality, it is easier to construct orthonormal matrix-valued wavelets. In this paper, we re-study the matrix-valued inner product more from the inner product viewpoint that is more fundamental and propose a new but equivalent norm for matrix-valued signals. We show that although it is not scalar-valued, it maintains most of the scalarvalued inner product properties. We introduce a new linear independence concept for matrix-valued signals and present some related properties. We then present the Gram-Schmidt orthonormalization procedure for a set of linearly independent matrix-valued signals. Finally we define matrix-valued lattices, where the newly introduced Gram-Schmidt orthogonalization might be applied.
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矩阵值信号与矩阵值格的矩阵值内积
为了构造矩阵值信号的正交矩阵值小波,提出了矩阵值内积方法。它引入的矩阵值信号的正交性比正交多小波构造中常用的矩阵中所有分量的正交性弱。由于正交性较弱,构造正交矩阵值小波比较容易。本文从更基本的内积观点出发,重新研究了矩阵值内积,提出了一个新的等价范数。我们证明了虽然它不是标量值,但它保持了大部分的标量值内积性质。本文引入了矩阵值信号的线性无关性概念,并给出了一些相关性质。然后,我们给出了一组线性无关的矩阵值信号的Gram-Schmidt标准正交化过程。最后,我们定义了矩阵值格,其中新引入的Gram-Schmidt正交化可以应用。
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